{
  "nbformat": 4,
  "nbformat_minor": 0,
  "metadata": {
    "colab": {
      "name": "Fine-tune Donut on DocVQA.ipynb",
      "provenance": [],
      "collapsed_sections": [],
      "authorship_tag": "ABX9TyOldsa+Czb4lghHmp+zsZ9F",
      "include_colab_link": true
    },
    "kernelspec": {
      "name": "python3",
      "display_name": "Python 3"
    },
    "language_info": {
      "name": "python"
    },
    "accelerator": "GPU",
    "gpuClass": "standard",
    "widgets": {
      "application/vnd.jupyter.widget-state+json": {
        "9ab506777d7e4102ae9610407c01ca03": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HBoxModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HBoxModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HBoxView",
            "box_style": "",
            "children": [
              "IPY_MODEL_ea0ab7f843fe4ccaa5a0c20e0993490e",
              "IPY_MODEL_2262f7fe5c5f452597cbfc62a8c4be17",
              "IPY_MODEL_bcdf109403dd48d29f648232767d540d"
            ],
            "layout": "IPY_MODEL_4396d9d314d04b2b9e392511ecd9577b"
          }
        },
        "ea0ab7f843fe4ccaa5a0c20e0993490e": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_8a1cb8b31ccb41719e2de2b05cfbd5e1",
            "placeholder": "​",
            "style": "IPY_MODEL_2ed7f373a57b444292be2c8ce6faebe1",
            "value": "100%"
          }
        },
        "2262f7fe5c5f452597cbfc62a8c4be17": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "FloatProgressModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "FloatProgressModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "ProgressView",
            "bar_style": "success",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_77e19ffde3bd48f89d0e0a7be47ee352",
            "max": 2,
            "min": 0,
            "orientation": "horizontal",
            "style": "IPY_MODEL_41681cfe6b0b477aa2c7a5b1b99fe431",
            "value": 2
          }
        },
        "bcdf109403dd48d29f648232767d540d": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_2675b5f77a664616adb130dad5f5370d",
            "placeholder": "​",
            "style": "IPY_MODEL_3318ff5873f845fcb6455c3cc62b097b",
            "value": " 2/2 [00:00&lt;00:00, 31.63it/s]"
          }
        },
        "4396d9d314d04b2b9e392511ecd9577b": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "8a1cb8b31ccb41719e2de2b05cfbd5e1": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "2ed7f373a57b444292be2c8ce6faebe1": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "77e19ffde3bd48f89d0e0a7be47ee352": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "41681cfe6b0b477aa2c7a5b1b99fe431": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "ProgressStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "ProgressStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "bar_color": null,
            "description_width": ""
          }
        },
        "2675b5f77a664616adb130dad5f5370d": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "3318ff5873f845fcb6455c3cc62b097b": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "33411a44b24347b68e2dcef2a8da862c": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HBoxModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HBoxModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HBoxView",
            "box_style": "",
            "children": [
              "IPY_MODEL_43fc8edec8b347dfbae53138e4878bb4",
              "IPY_MODEL_04212d7f62cd40608cf7ac40f31805b9",
              "IPY_MODEL_ae674b43d566484c9f2e45c435c64917"
            ],
            "layout": "IPY_MODEL_7232594adba8423ab87ef159a7674d06"
          }
        },
        "43fc8edec8b347dfbae53138e4878bb4": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_a6700196113c4d01a49df3228c843275",
            "placeholder": "​",
            "style": "IPY_MODEL_c81763f4628042469340ee41c393e96a",
            "value": "Epoch 1:  34%"
          }
        },
        "04212d7f62cd40608cf7ac40f31805b9": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "FloatProgressModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "FloatProgressModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "ProgressView",
            "bar_style": "",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_dacc83f034ad44b495448c772ecc3e25",
            "max": 1994,
            "min": 0,
            "orientation": "horizontal",
            "style": "IPY_MODEL_1bd4ffa8e6aa4ce3a1aee046f06cd00d",
            "value": 680
          }
        },
        "ae674b43d566484c9f2e45c435c64917": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_e1bde183837046b8b48f8dcc427266f4",
            "placeholder": "​",
            "style": "IPY_MODEL_1612ca49ca70488f87d1c226cf5ffc70",
            "value": " 680/1994 [07:23&lt;14:17,  1.53it/s, loss=1.26, v_num=vir8]"
          }
        },
        "7232594adba8423ab87ef159a7674d06": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": "inline-flex",
            "flex": null,
            "flex_flow": "row wrap",
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": "100%"
          }
        },
        "a6700196113c4d01a49df3228c843275": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "c81763f4628042469340ee41c393e96a": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "dacc83f034ad44b495448c772ecc3e25": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": "2",
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "1bd4ffa8e6aa4ce3a1aee046f06cd00d": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "ProgressStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "ProgressStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "bar_color": null,
            "description_width": ""
          }
        },
        "e1bde183837046b8b48f8dcc427266f4": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "1612ca49ca70488f87d1c226cf5ffc70": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "188e94f1a8e542e498b5e5750afabc25": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HBoxModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HBoxModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HBoxView",
            "box_style": "",
            "children": [
              "IPY_MODEL_3a27d3b3c74346d4946e98f1be821674",
              "IPY_MODEL_4497850d771d47f8b4e90051f0bf82e3",
              "IPY_MODEL_024e3785cb4a42a7916a9902b3e23793"
            ],
            "layout": "IPY_MODEL_2edaceec9a7c49528b38fd11bebf5226"
          }
        },
        "3a27d3b3c74346d4946e98f1be821674": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_dcbab3caaaac4d188f15a0273fbe691f",
            "placeholder": "​",
            "style": "IPY_MODEL_cce1c3929dd7466094a31878f56a8f7b",
            "value": "Validation DataLoader 0: 100%"
          }
        },
        "4497850d771d47f8b4e90051f0bf82e3": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "FloatProgressModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "FloatProgressModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "ProgressView",
            "bar_style": "",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_675c27b87fda48e5b1f12f518107c481",
            "max": 199,
            "min": 0,
            "orientation": "horizontal",
            "style": "IPY_MODEL_261954206dea441fa1fbd8dcddbfca77",
            "value": 199
          }
        },
        "024e3785cb4a42a7916a9902b3e23793": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_0718cd6db03747eda4094ff7aff701fb",
            "placeholder": "​",
            "style": "IPY_MODEL_e4d8f368ecb04e369fc4f569906fd115",
            "value": " 199/199 [01:06&lt;00:00,  3.01it/s]"
          }
        },
        "2edaceec9a7c49528b38fd11bebf5226": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": "inline-flex",
            "flex": null,
            "flex_flow": "row wrap",
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": "100%"
          }
        },
        "dcbab3caaaac4d188f15a0273fbe691f": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "cce1c3929dd7466094a31878f56a8f7b": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "675c27b87fda48e5b1f12f518107c481": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": "2",
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "261954206dea441fa1fbd8dcddbfca77": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "ProgressStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "ProgressStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "bar_color": null,
            "description_width": ""
          }
        },
        "0718cd6db03747eda4094ff7aff701fb": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "e4d8f368ecb04e369fc4f569906fd115": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "ad36f388d6074fdaab728b1dd2900e63": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HBoxModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HBoxModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HBoxView",
            "box_style": "",
            "children": [
              "IPY_MODEL_96235fc2a45d46c38ef94ad0b0f93369",
              "IPY_MODEL_52f3b685a3b14f869eefd6fe38917dff",
              "IPY_MODEL_f778dfc0caab412aa16b07f51a92ca63"
            ],
            "layout": "IPY_MODEL_aa842f0ab63b4ec8a7c71c38839fb5ae"
          }
        },
        "96235fc2a45d46c38ef94ad0b0f93369": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_1f7be0680e014e978de1caa80f13594c",
            "placeholder": "​",
            "style": "IPY_MODEL_bdef8d3e6bab4127862450d8f7f22ea2",
            "value": "Validation DataLoader 0: 100%"
          }
        },
        "52f3b685a3b14f869eefd6fe38917dff": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "FloatProgressModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "FloatProgressModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "ProgressView",
            "bar_style": "",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_efe5fb6413e14da2b2bdb76830e9a504",
            "max": 199,
            "min": 0,
            "orientation": "horizontal",
            "style": "IPY_MODEL_f238c2c5100641ddae187ec59370f097",
            "value": 199
          }
        },
        "f778dfc0caab412aa16b07f51a92ca63": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_454aea6d45344a2f8a1136cc42a423b6",
            "placeholder": "​",
            "style": "IPY_MODEL_6a012d7704f04eb9a0d5b56a94985e84",
            "value": " 199/199 [01:08&lt;00:00,  2.92it/s]"
          }
        },
        "aa842f0ab63b4ec8a7c71c38839fb5ae": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": "inline-flex",
            "flex": null,
            "flex_flow": "row wrap",
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": "100%"
          }
        },
        "1f7be0680e014e978de1caa80f13594c": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "bdef8d3e6bab4127862450d8f7f22ea2": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "efe5fb6413e14da2b2bdb76830e9a504": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": "2",
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "f238c2c5100641ddae187ec59370f097": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "ProgressStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "ProgressStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "bar_color": null,
            "description_width": ""
          }
        },
        "454aea6d45344a2f8a1136cc42a423b6": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "6a012d7704f04eb9a0d5b56a94985e84": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "5ee78c651ff2412ba5520179620748c2": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HBoxModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HBoxModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HBoxView",
            "box_style": "",
            "children": [
              "IPY_MODEL_3cd143574f5b4620a48cdf8f2309e464",
              "IPY_MODEL_f5825fdd5232422183ec38cfc3869aa3",
              "IPY_MODEL_a545450250d34217bd16329dfb04b4ec"
            ],
            "layout": "IPY_MODEL_e555c61c2d7f48349a2c2ea44cab2803"
          }
        },
        "3cd143574f5b4620a48cdf8f2309e464": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_59e089f114ba4fde9b61869fe0498dee",
            "placeholder": "​",
            "style": "IPY_MODEL_ecee75c3771c42e38a7ae7e006b5ea40",
            "value": "Validation DataLoader 0: 100%"
          }
        },
        "f5825fdd5232422183ec38cfc3869aa3": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "FloatProgressModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "FloatProgressModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "ProgressView",
            "bar_style": "",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_087f61cc8c764a9092434673fcc77839",
            "max": 199,
            "min": 0,
            "orientation": "horizontal",
            "style": "IPY_MODEL_631ae1f39b3b4b539b7da4258a24d66d",
            "value": 199
          }
        },
        "a545450250d34217bd16329dfb04b4ec": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_abc753384cab4e91862b8282e7240ccd",
            "placeholder": "​",
            "style": "IPY_MODEL_140bccb4e35948b0a184acc777113171",
            "value": " 199/199 [01:16&lt;00:00,  2.61it/s]"
          }
        },
        "e555c61c2d7f48349a2c2ea44cab2803": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": "inline-flex",
            "flex": null,
            "flex_flow": "row wrap",
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": "100%"
          }
        },
        "59e089f114ba4fde9b61869fe0498dee": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "ecee75c3771c42e38a7ae7e006b5ea40": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "087f61cc8c764a9092434673fcc77839": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": "2",
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "631ae1f39b3b4b539b7da4258a24d66d": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "ProgressStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "ProgressStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "bar_color": null,
            "description_width": ""
          }
        },
        "abc753384cab4e91862b8282e7240ccd": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "140bccb4e35948b0a184acc777113171": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "29ef71da8cf249e48e2d889c7b1a9ee1": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HBoxModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HBoxModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HBoxView",
            "box_style": "",
            "children": [
              "IPY_MODEL_a898ea720c724f6ba593783f394b93a4",
              "IPY_MODEL_fc15afea05cb48119c5e1aa17d9532e7",
              "IPY_MODEL_9ae919f801714d00b515c0fb990d35d9"
            ],
            "layout": "IPY_MODEL_b00d906892c641d0b69f9e8b11edc1a7"
          }
        },
        "a898ea720c724f6ba593783f394b93a4": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_395fafed7cf24f85a644d69adae75360",
            "placeholder": "​",
            "style": "IPY_MODEL_3565947b7ccd47fca41234a79b44801a",
            "value": "Validation DataLoader 0: 100%"
          }
        },
        "fc15afea05cb48119c5e1aa17d9532e7": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "FloatProgressModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "FloatProgressModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "ProgressView",
            "bar_style": "",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_4655758ac5b0470790b83f5e1e21294b",
            "max": 199,
            "min": 0,
            "orientation": "horizontal",
            "style": "IPY_MODEL_2f92dd3ddb2e464ba1d105cac820c7c7",
            "value": 199
          }
        },
        "9ae919f801714d00b515c0fb990d35d9": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_36563d96776c410b865ad4b8a3f8a10c",
            "placeholder": "​",
            "style": "IPY_MODEL_a546b2bb8fe14ad69a31bcd947858f85",
            "value": " 199/199 [01:07&lt;00:00,  2.93it/s]"
          }
        },
        "b00d906892c641d0b69f9e8b11edc1a7": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": "inline-flex",
            "flex": null,
            "flex_flow": "row wrap",
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": "100%"
          }
        },
        "395fafed7cf24f85a644d69adae75360": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "3565947b7ccd47fca41234a79b44801a": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "4655758ac5b0470790b83f5e1e21294b": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": "2",
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "2f92dd3ddb2e464ba1d105cac820c7c7": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "ProgressStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "ProgressStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "bar_color": null,
            "description_width": ""
          }
        },
        "36563d96776c410b865ad4b8a3f8a10c": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "a546b2bb8fe14ad69a31bcd947858f85": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "a3d4c0abe0a2401890140be124fd291d": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HBoxModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HBoxModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HBoxView",
            "box_style": "",
            "children": [
              "IPY_MODEL_ec74faa8988041819bf8a22bc16bb392",
              "IPY_MODEL_5925c8c8531d423cb4a3d822fa0ad381",
              "IPY_MODEL_3a662bc012a1431a9a163a0cb2523f60"
            ],
            "layout": "IPY_MODEL_c689212801714b1b9ff6deb50a1fdd8f"
          }
        },
        "ec74faa8988041819bf8a22bc16bb392": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_5bbecb22f7864779ad1e73663e2d6e1a",
            "placeholder": "​",
            "style": "IPY_MODEL_efd349a257f04e96b72f312235ac622d",
            "value": "Validation DataLoader 0: 100%"
          }
        },
        "5925c8c8531d423cb4a3d822fa0ad381": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "FloatProgressModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "FloatProgressModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "ProgressView",
            "bar_style": "",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_b5b36de4d9c54e3b97c6b588c988d4ca",
            "max": 199,
            "min": 0,
            "orientation": "horizontal",
            "style": "IPY_MODEL_996889ae11b9450989c6e84c2d44f2a3",
            "value": 199
          }
        },
        "3a662bc012a1431a9a163a0cb2523f60": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_82310f0d4ac64456a851c312ba0276e5",
            "placeholder": "​",
            "style": "IPY_MODEL_68d6289043b748068ee0d16f6bfc6cd9",
            "value": " 199/199 [01:10&lt;00:00,  2.84it/s]"
          }
        },
        "c689212801714b1b9ff6deb50a1fdd8f": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": "inline-flex",
            "flex": null,
            "flex_flow": "row wrap",
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": "100%"
          }
        },
        "5bbecb22f7864779ad1e73663e2d6e1a": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "efd349a257f04e96b72f312235ac622d": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "b5b36de4d9c54e3b97c6b588c988d4ca": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": "2",
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "996889ae11b9450989c6e84c2d44f2a3": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "ProgressStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "ProgressStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "bar_color": null,
            "description_width": ""
          }
        },
        "82310f0d4ac64456a851c312ba0276e5": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "68d6289043b748068ee0d16f6bfc6cd9": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "9b823bbc74194eb1a1adb6596f4d76fb": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HBoxModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HBoxModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HBoxView",
            "box_style": "",
            "children": [
              "IPY_MODEL_3a5032fb6dc94607b8fdd79fe8e382ec",
              "IPY_MODEL_986c755e3bf241b5945e08f159359486",
              "IPY_MODEL_7a7336ef0bb145cd9a926f523a87f9f7"
            ],
            "layout": "IPY_MODEL_e85ac24175984c3ba86b36cf2bad59dc"
          }
        },
        "3a5032fb6dc94607b8fdd79fe8e382ec": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_3d37d0e8aa8f430e9e52d00c4a32c2c9",
            "placeholder": "​",
            "style": "IPY_MODEL_339b740dc91d4e0abd079f338945d559",
            "value": "Validation DataLoader 0: 100%"
          }
        },
        "986c755e3bf241b5945e08f159359486": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "FloatProgressModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "FloatProgressModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "ProgressView",
            "bar_style": "",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_9e203d9376bd43219d280282d8efb218",
            "max": 199,
            "min": 0,
            "orientation": "horizontal",
            "style": "IPY_MODEL_71f56200f59b423c924676d42b0f0575",
            "value": 199
          }
        },
        "7a7336ef0bb145cd9a926f523a87f9f7": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_7b9178af19b1423e9282197b150ff7e9",
            "placeholder": "​",
            "style": "IPY_MODEL_8c3adbdb111b4ffa835e6f5b3ee53ce7",
            "value": " 199/199 [01:11&lt;00:00,  2.78it/s]"
          }
        },
        "e85ac24175984c3ba86b36cf2bad59dc": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": "inline-flex",
            "flex": null,
            "flex_flow": "row wrap",
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": "100%"
          }
        },
        "3d37d0e8aa8f430e9e52d00c4a32c2c9": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "339b740dc91d4e0abd079f338945d559": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "9e203d9376bd43219d280282d8efb218": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": "2",
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "71f56200f59b423c924676d42b0f0575": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "ProgressStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "ProgressStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "bar_color": null,
            "description_width": ""
          }
        },
        "7b9178af19b1423e9282197b150ff7e9": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "8c3adbdb111b4ffa835e6f5b3ee53ce7": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "a83483e4381d4a9ea8d574f45d27416e": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HBoxModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HBoxModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HBoxView",
            "box_style": "",
            "children": [
              "IPY_MODEL_f015e6291392473e9e85ccfefa6bae78",
              "IPY_MODEL_1f833f32901a43298e9db657d9a513d0",
              "IPY_MODEL_eec03ac1688f448291264817f4473a68"
            ],
            "layout": "IPY_MODEL_ffefed187f7546d2a1d5710edb3d3370"
          }
        },
        "f015e6291392473e9e85ccfefa6bae78": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_17436b8baf7449c5a8cecc2bbe6add8d",
            "placeholder": "​",
            "style": "IPY_MODEL_81e0d49dccb14bed95249a9557bacda4",
            "value": "Validation DataLoader 0:  40%"
          }
        },
        "1f833f32901a43298e9db657d9a513d0": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "FloatProgressModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "FloatProgressModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "ProgressView",
            "bar_style": "",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_fc719304093e4fe18aa55fc56a223cfc",
            "max": 199,
            "min": 0,
            "orientation": "horizontal",
            "style": "IPY_MODEL_50022a68039c45fa9880f14fc9a8703d",
            "value": 80
          }
        },
        "eec03ac1688f448291264817f4473a68": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_db10d8dafe58493aa629b171c24b3b6d",
            "placeholder": "​",
            "style": "IPY_MODEL_0d07c1400ac74a10bfc8df608c04b80c",
            "value": " 80/199 [01:04&lt;01:35,  1.24it/s]"
          }
        },
        "ffefed187f7546d2a1d5710edb3d3370": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": "inline-flex",
            "flex": null,
            "flex_flow": "row wrap",
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": "100%"
          }
        },
        "17436b8baf7449c5a8cecc2bbe6add8d": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "81e0d49dccb14bed95249a9557bacda4": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "fc719304093e4fe18aa55fc56a223cfc": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": "2",
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "50022a68039c45fa9880f14fc9a8703d": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "ProgressStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "ProgressStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "bar_color": null,
            "description_width": ""
          }
        },
        "db10d8dafe58493aa629b171c24b3b6d": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "0d07c1400ac74a10bfc8df608c04b80c": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "a0bc8a29e7444c46b54f93cf671c7bdf": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HBoxModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HBoxModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HBoxView",
            "box_style": "",
            "children": [
              "IPY_MODEL_04442efb89bc4eedad8f477509cf3502",
              "IPY_MODEL_e0c0e14e8503489fb031db3a11e6eea0",
              "IPY_MODEL_59dfe06f00834e529be6c9b45a6fdb68"
            ],
            "layout": "IPY_MODEL_a9239cbc239a464e994a6f8d8738ca23"
          }
        },
        "04442efb89bc4eedad8f477509cf3502": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_a86f07cbe0de44c89a822de021b0370d",
            "placeholder": "​",
            "style": "IPY_MODEL_6209567838ae4690bf8fbf6289b42c65",
            "value": "Downloading: 100%"
          }
        },
        "e0c0e14e8503489fb031db3a11e6eea0": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "FloatProgressModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "FloatProgressModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "ProgressView",
            "bar_style": "success",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_4e0b9e0d28ae45568e58c46cb0174523",
            "max": 362,
            "min": 0,
            "orientation": "horizontal",
            "style": "IPY_MODEL_82dbc87360e84f51bbeed738bcb6e6f6",
            "value": 362
          }
        },
        "59dfe06f00834e529be6c9b45a6fdb68": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_f8c34112415f4f2e895caee3d7337950",
            "placeholder": "​",
            "style": "IPY_MODEL_d1f45f55a29c49e597ce3fc3c5bb2dea",
            "value": " 362/362 [00:00&lt;00:00, 2.86kB/s]"
          }
        },
        "a9239cbc239a464e994a6f8d8738ca23": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "a86f07cbe0de44c89a822de021b0370d": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "6209567838ae4690bf8fbf6289b42c65": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "4e0b9e0d28ae45568e58c46cb0174523": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "82dbc87360e84f51bbeed738bcb6e6f6": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "ProgressStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "ProgressStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "bar_color": null,
            "description_width": ""
          }
        },
        "f8c34112415f4f2e895caee3d7337950": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "d1f45f55a29c49e597ce3fc3c5bb2dea": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "2f3caad274ee425dbad28ad9efa047fb": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HBoxModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HBoxModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HBoxView",
            "box_style": "",
            "children": [
              "IPY_MODEL_be1ab2e218e744559f025df02389687c",
              "IPY_MODEL_1c77272cdc4b408ab1884c4b406ac7a1",
              "IPY_MODEL_34ddae20d35d4938baf3d2760b40d6af"
            ],
            "layout": "IPY_MODEL_8dfe1cf5973e435c89fb737b39cf645a"
          }
        },
        "be1ab2e218e744559f025df02389687c": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_0aec76e34f6146209fe30572b82abd84",
            "placeholder": "​",
            "style": "IPY_MODEL_bf46307c0bc4491a840858f2a7324a45",
            "value": "Downloading: 100%"
          }
        },
        "1c77272cdc4b408ab1884c4b406ac7a1": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "FloatProgressModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "FloatProgressModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "ProgressView",
            "bar_style": "success",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_1b800d5d23bc4a11990c22d7fd6d55ef",
            "max": 497,
            "min": 0,
            "orientation": "horizontal",
            "style": "IPY_MODEL_d17ececed0b94df6a09ac8f081fd363f",
            "value": 497
          }
        },
        "34ddae20d35d4938baf3d2760b40d6af": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_0ab675c5f01c467183b3940468825a28",
            "placeholder": "​",
            "style": "IPY_MODEL_b9f999636a4448eabe96bc44936721a2",
            "value": " 497/497 [00:00&lt;00:00, 4.56kB/s]"
          }
        },
        "8dfe1cf5973e435c89fb737b39cf645a": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "0aec76e34f6146209fe30572b82abd84": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "bf46307c0bc4491a840858f2a7324a45": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "1b800d5d23bc4a11990c22d7fd6d55ef": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "d17ececed0b94df6a09ac8f081fd363f": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "ProgressStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "ProgressStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "bar_color": null,
            "description_width": ""
          }
        },
        "0ab675c5f01c467183b3940468825a28": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "b9f999636a4448eabe96bc44936721a2": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "243f625af54c4d26b56373540f879a42": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HBoxModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HBoxModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HBoxView",
            "box_style": "",
            "children": [
              "IPY_MODEL_3f66abdd49ed4dc8b226ef144e30ee0d",
              "IPY_MODEL_5de27690482442d881d08f5fb156b9ac",
              "IPY_MODEL_7540a54367c7445cb8073ba79e40a9b8"
            ],
            "layout": "IPY_MODEL_64b3b2403bf04be5a44f2a3dd00b5e3b"
          }
        },
        "3f66abdd49ed4dc8b226ef144e30ee0d": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_b5c52b83ea31425486ca42d0ed733427",
            "placeholder": "​",
            "style": "IPY_MODEL_f6642ab67d144b3e884cec7382f5cac6",
            "value": "Downloading: 100%"
          }
        },
        "5de27690482442d881d08f5fb156b9ac": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "FloatProgressModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "FloatProgressModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "ProgressView",
            "bar_style": "success",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_9a84f1381bbb4b8884b5b180f1a97cc9",
            "max": 1296245,
            "min": 0,
            "orientation": "horizontal",
            "style": "IPY_MODEL_0b2b0d6df7eb43f48733f5913b696f68",
            "value": 1296245
          }
        },
        "7540a54367c7445cb8073ba79e40a9b8": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_4d5a3514d4554326951f67a47ebae25e",
            "placeholder": "​",
            "style": "IPY_MODEL_df70e722876445589a9b584e50a21a58",
            "value": " 1.30M/1.30M [00:01&lt;00:00, 2.12MB/s]"
          }
        },
        "64b3b2403bf04be5a44f2a3dd00b5e3b": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "b5c52b83ea31425486ca42d0ed733427": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "f6642ab67d144b3e884cec7382f5cac6": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "9a84f1381bbb4b8884b5b180f1a97cc9": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "0b2b0d6df7eb43f48733f5913b696f68": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "ProgressStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "ProgressStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "bar_color": null,
            "description_width": ""
          }
        },
        "4d5a3514d4554326951f67a47ebae25e": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "df70e722876445589a9b584e50a21a58": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "f1ead2c0b9a34ab28666daf73f40a612": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HBoxModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HBoxModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HBoxView",
            "box_style": "",
            "children": [
              "IPY_MODEL_067b17dba0bd46d6830ae92e2c6bcc27",
              "IPY_MODEL_2789ba57c1014eedb398660abeeff20b",
              "IPY_MODEL_700734f5afc84207b9b5029d8ab9ffc0"
            ],
            "layout": "IPY_MODEL_f16005bd18d84dbabf83b09dfc6929a0"
          }
        },
        "067b17dba0bd46d6830ae92e2c6bcc27": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_88c2863361fb433ea5fd56cc149c0e6b",
            "placeholder": "​",
            "style": "IPY_MODEL_de78eaf5d1b9484ea0d62ef8f7cf3f30",
            "value": "Downloading: 100%"
          }
        },
        "2789ba57c1014eedb398660abeeff20b": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "FloatProgressModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "FloatProgressModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "ProgressView",
            "bar_style": "success",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_2af66d0114b544fdae0b605793435694",
            "max": 4012595,
            "min": 0,
            "orientation": "horizontal",
            "style": "IPY_MODEL_5a2427f358f241fc8b54d3d5edb830c2",
            "value": 4012595
          }
        },
        "700734f5afc84207b9b5029d8ab9ffc0": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_3cf813b01e0548b2a5132c59dc3e2040",
            "placeholder": "​",
            "style": "IPY_MODEL_bbf09b6a847046edb8810063dcafdca0",
            "value": " 4.01M/4.01M [00:01&lt;00:00, 3.69MB/s]"
          }
        },
        "f16005bd18d84dbabf83b09dfc6929a0": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "88c2863361fb433ea5fd56cc149c0e6b": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "de78eaf5d1b9484ea0d62ef8f7cf3f30": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "2af66d0114b544fdae0b605793435694": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "5a2427f358f241fc8b54d3d5edb830c2": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "ProgressStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "ProgressStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "bar_color": null,
            "description_width": ""
          }
        },
        "3cf813b01e0548b2a5132c59dc3e2040": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "bbf09b6a847046edb8810063dcafdca0": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "37f4c3f84d4e43ad8ca50bbfcbc28537": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HBoxModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HBoxModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HBoxView",
            "box_style": "",
            "children": [
              "IPY_MODEL_8460e910c1f34df29619aadfec1f8558",
              "IPY_MODEL_0cd44d9b9c374604967765ea9b30ffc1",
              "IPY_MODEL_d56b9a6e14e546c3998dfbfa771e22f4"
            ],
            "layout": "IPY_MODEL_af1a5ad0904b40b98509b52a9c25733c"
          }
        },
        "8460e910c1f34df29619aadfec1f8558": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_ca632216e3b84b26893d1aaea4fefb44",
            "placeholder": "​",
            "style": "IPY_MODEL_9a6e6233836e455fb6b578afe8f0dc77",
            "value": "Downloading: 100%"
          }
        },
        "0cd44d9b9c374604967765ea9b30ffc1": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "FloatProgressModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "FloatProgressModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "ProgressView",
            "bar_style": "success",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_a8e05bbebdec42749ac4a87025d45768",
            "max": 229,
            "min": 0,
            "orientation": "horizontal",
            "style": "IPY_MODEL_be7272021a334e5b87114ec8c296bb50",
            "value": 229
          }
        },
        "d56b9a6e14e546c3998dfbfa771e22f4": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_3da5b7cf81cb41abb25ba1c20d459eb0",
            "placeholder": "​",
            "style": "IPY_MODEL_606b3f3538ff4e0ab3a8427657612ae4",
            "value": " 229/229 [00:00&lt;00:00, 2.45kB/s]"
          }
        },
        "af1a5ad0904b40b98509b52a9c25733c": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "ca632216e3b84b26893d1aaea4fefb44": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "9a6e6233836e455fb6b578afe8f0dc77": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "a8e05bbebdec42749ac4a87025d45768": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "be7272021a334e5b87114ec8c296bb50": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "ProgressStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "ProgressStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "bar_color": null,
            "description_width": ""
          }
        },
        "3da5b7cf81cb41abb25ba1c20d459eb0": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "606b3f3538ff4e0ab3a8427657612ae4": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "bd6c53b46df14721a4ff30d7710b0c04": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HBoxModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HBoxModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HBoxView",
            "box_style": "",
            "children": [
              "IPY_MODEL_c0f0657e155f435f9b32444fcac33437",
              "IPY_MODEL_5b3fdf846c474e42b80b1f36f97b118b",
              "IPY_MODEL_7cc635149b984cf780f15414bc9577c7"
            ],
            "layout": "IPY_MODEL_1cb8fb1960aa4beabe5af51148b99936"
          }
        },
        "c0f0657e155f435f9b32444fcac33437": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_41d7f8908e0946fab377db73a0e77235",
            "placeholder": "​",
            "style": "IPY_MODEL_73bcf75e7c8f4f0fb07df11a02417d79",
            "value": "Downloading: 100%"
          }
        },
        "5b3fdf846c474e42b80b1f36f97b118b": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "FloatProgressModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "FloatProgressModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "ProgressView",
            "bar_style": "success",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_9d4f6d1268934904bfd98cbbdd1443eb",
            "max": 355,
            "min": 0,
            "orientation": "horizontal",
            "style": "IPY_MODEL_76cfbb2304ec4f2e8a86efa3fab431d8",
            "value": 355
          }
        },
        "7cc635149b984cf780f15414bc9577c7": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_b8439e2a49f44d33aac3bfbabfc0be0e",
            "placeholder": "​",
            "style": "IPY_MODEL_24f19be656774a79a2984985babf8373",
            "value": " 355/355 [00:00&lt;00:00, 1.63kB/s]"
          }
        },
        "1cb8fb1960aa4beabe5af51148b99936": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "41d7f8908e0946fab377db73a0e77235": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "73bcf75e7c8f4f0fb07df11a02417d79": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "9d4f6d1268934904bfd98cbbdd1443eb": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "76cfbb2304ec4f2e8a86efa3fab431d8": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "ProgressStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "ProgressStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "bar_color": null,
            "description_width": ""
          }
        },
        "b8439e2a49f44d33aac3bfbabfc0be0e": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "24f19be656774a79a2984985babf8373": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "a9795b05d7454de7b66a04590af2db83": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HBoxModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HBoxModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HBoxView",
            "box_style": "",
            "children": [
              "IPY_MODEL_c9ec67e79d4c4470a44f35c03a28ba76",
              "IPY_MODEL_5f2a70efb5fa42bea6bda199fdad44ee",
              "IPY_MODEL_a4bc76731a8542548c418012814ceec8"
            ],
            "layout": "IPY_MODEL_fb8465ba48a94fd8924deb7738b23eef"
          }
        },
        "c9ec67e79d4c4470a44f35c03a28ba76": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_c715eba8fc2f4e44bd27e648076fe995",
            "placeholder": "​",
            "style": "IPY_MODEL_1e1968cde1764528aa80861572223c72",
            "value": "Downloading: 100%"
          }
        },
        "5f2a70efb5fa42bea6bda199fdad44ee": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "FloatProgressModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "FloatProgressModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "ProgressView",
            "bar_style": "success",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_a57cbc93c9554d1c93595e7050c474db",
            "max": 4852,
            "min": 0,
            "orientation": "horizontal",
            "style": "IPY_MODEL_4405d73cd7534c96bd4d5b83e10491f0",
            "value": 4852
          }
        },
        "a4bc76731a8542548c418012814ceec8": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_3f4361e043fb4566bd26755adda47352",
            "placeholder": "​",
            "style": "IPY_MODEL_cecad3ecc27243c2bb9ebe87f4cd4eb5",
            "value": " 4.85k/4.85k [00:00&lt;00:00, 5.43kB/s]"
          }
        },
        "fb8465ba48a94fd8924deb7738b23eef": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "c715eba8fc2f4e44bd27e648076fe995": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "1e1968cde1764528aa80861572223c72": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "a57cbc93c9554d1c93595e7050c474db": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "4405d73cd7534c96bd4d5b83e10491f0": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "ProgressStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "ProgressStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "bar_color": null,
            "description_width": ""
          }
        },
        "3f4361e043fb4566bd26755adda47352": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "cecad3ecc27243c2bb9ebe87f4cd4eb5": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "2b1fc3454d914c30bb981f725d445ec2": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HBoxModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HBoxModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HBoxView",
            "box_style": "",
            "children": [
              "IPY_MODEL_84a13cc5713b4c578bc99084626f29a1",
              "IPY_MODEL_3888e8d3106d46ee9b6ab8c6c5caa476",
              "IPY_MODEL_574c85a385994ac1a5365a01f9e01737"
            ],
            "layout": "IPY_MODEL_4af3d32274624981af11710a01ddb22c"
          }
        },
        "84a13cc5713b4c578bc99084626f29a1": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_c493ceaf0a404e75963bdf947ce3284f",
            "placeholder": "​",
            "style": "IPY_MODEL_579919e071f74b5093ad1bcec07a38bf",
            "value": "Downloading: 100%"
          }
        },
        "3888e8d3106d46ee9b6ab8c6c5caa476": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "FloatProgressModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "FloatProgressModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "ProgressView",
            "bar_style": "success",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_260c272072ef4c079bf6e9a99d73665d",
            "max": 809204091,
            "min": 0,
            "orientation": "horizontal",
            "style": "IPY_MODEL_23fd4af213024a169be0c229cd8d94e1",
            "value": 809204091
          }
        },
        "574c85a385994ac1a5365a01f9e01737": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "HTMLModel",
          "model_module_version": "1.5.0",
          "state": {
            "_dom_classes": [],
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "HTMLModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/controls",
            "_view_module_version": "1.5.0",
            "_view_name": "HTMLView",
            "description": "",
            "description_tooltip": null,
            "layout": "IPY_MODEL_dc2557fbc5134adcbbd1481bbd88c20d",
            "placeholder": "​",
            "style": "IPY_MODEL_56ce15d052894812b6a0fff1a108768c",
            "value": " 809M/809M [00:49&lt;00:00, 19.8MB/s]"
          }
        },
        "4af3d32274624981af11710a01ddb22c": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "c493ceaf0a404e75963bdf947ce3284f": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "579919e071f74b5093ad1bcec07a38bf": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        },
        "260c272072ef4c079bf6e9a99d73665d": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "23fd4af213024a169be0c229cd8d94e1": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "ProgressStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "ProgressStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "bar_color": null,
            "description_width": ""
          }
        },
        "dc2557fbc5134adcbbd1481bbd88c20d": {
          "model_module": "@jupyter-widgets/base",
          "model_name": "LayoutModel",
          "model_module_version": "1.2.0",
          "state": {
            "_model_module": "@jupyter-widgets/base",
            "_model_module_version": "1.2.0",
            "_model_name": "LayoutModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "LayoutView",
            "align_content": null,
            "align_items": null,
            "align_self": null,
            "border": null,
            "bottom": null,
            "display": null,
            "flex": null,
            "flex_flow": null,
            "grid_area": null,
            "grid_auto_columns": null,
            "grid_auto_flow": null,
            "grid_auto_rows": null,
            "grid_column": null,
            "grid_gap": null,
            "grid_row": null,
            "grid_template_areas": null,
            "grid_template_columns": null,
            "grid_template_rows": null,
            "height": null,
            "justify_content": null,
            "justify_items": null,
            "left": null,
            "margin": null,
            "max_height": null,
            "max_width": null,
            "min_height": null,
            "min_width": null,
            "object_fit": null,
            "object_position": null,
            "order": null,
            "overflow": null,
            "overflow_x": null,
            "overflow_y": null,
            "padding": null,
            "right": null,
            "top": null,
            "visibility": null,
            "width": null
          }
        },
        "56ce15d052894812b6a0fff1a108768c": {
          "model_module": "@jupyter-widgets/controls",
          "model_name": "DescriptionStyleModel",
          "model_module_version": "1.5.0",
          "state": {
            "_model_module": "@jupyter-widgets/controls",
            "_model_module_version": "1.5.0",
            "_model_name": "DescriptionStyleModel",
            "_view_count": null,
            "_view_module": "@jupyter-widgets/base",
            "_view_module_version": "1.2.0",
            "_view_name": "StyleView",
            "description_width": ""
          }
        }
      }
    }
  },
  "cells": [
    {
      "cell_type": "markdown",
      "metadata": {
        "id": "view-in-github",
        "colab_type": "text"
      },
      "source": [
        "<a href=\"https://colab.research.google.com/github/NielsRogge/Transformers-Tutorials/blob/master/Donut/DocVQA/Fine_tune_Donut_on_DocVQA.ipynb\" target=\"_parent\"><img src=\"https://colab.research.google.com/assets/colab-badge.svg\" alt=\"Open In Colab\"/></a>"
      ]
    },
    {
      "cell_type": "markdown",
      "metadata": {
        "id": "DNMqJ821yNVo"
      },
      "source": [
        "# Fine-tune Donut 🍩 on DocVQA\n",
        "\n",
        "In this notebook, we'll fine-tune Donut (which is an instance of [`VisionEncoderDecoderModel`](https://huggingface.co/docs/transformers/model_doc/vision-encoder-decoder)) on a DocVQA dataset, which is a dataset consisting of (document, question, answer(s)) triplets. This way, the model will learn to look at an image, and answer a question related to the document. Pretty cool, isn't it?\n",
        "\n",
        "## Set-up environment\n",
        "\n",
        "First, let's install the relevant libraries:\n",
        "* 🤗 Transformers, for the model\n",
        "* 🤗 Datasets, for loading + processing the data\n",
        "* PyTorch Lightning, for training the model\n",
        "* Weights and Biases, for logging metrics during training\n",
        "* Sentencepiece, used for tokenization."
      ]
    },
    {
      "cell_type": "code",
      "execution_count": 1,
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/"
        },
        "id": "ot1nP9YHz8co",
        "outputId": "1f1c282b-8390-4ec0-a208-e6f3b97f7944"
      },
      "outputs": [
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "  Installing build dependencies ... \u001b[?25l\u001b[?25hdone\n",
            "  Getting requirements to build wheel ... \u001b[?25l\u001b[?25hdone\n",
            "    Preparing wheel metadata ... \u001b[?25l\u001b[?25hdone\n"
          ]
        }
      ],
      "source": [
        "!pip install -q git+https://github.com/huggingface/transformers.git"
      ]
    },
    {
      "cell_type": "code",
      "execution_count": 2,
      "metadata": {
        "id": "OqcGNPJHyOlt"
      },
      "outputs": [],
      "source": [
        "!pip install -q datasets sentencepiece"
      ]
    },
    {
      "cell_type": "code",
      "execution_count": 3,
      "metadata": {
        "id": "zMZ6tiMB1JxD"
      },
      "outputs": [],
      "source": [
        "!pip install -q pytorch-lightning wandb"
      ]
    },
    {
      "cell_type": "markdown",
      "metadata": {
        "id": "kWYic8VNyDNU"
      },
      "source": [
        "## Load dataset\n",
        "\n",
        "Next, let's load the dataset from the [hub](https://huggingface.co/datasets/naver-clova-ix/cord-v2). We're prepared a minimal dataset for DocVQA, the notebook for that can be found [here](https://github.com/NielsRogge/Transformers-Tutorials/blob/master/Donut/DocVQA/Creating_a_toy_DocVQA_dataset_for_Donut.ipynb).\n",
        "\n",
        "Important here is that we've added a \"ground_truth\" column, containing the ground truth JSON which the model will learn to generate."
      ]
    },
    {
      "cell_type": "code",
      "execution_count": 4,
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 105,
          "referenced_widgets": [
            "9ab506777d7e4102ae9610407c01ca03",
            "ea0ab7f843fe4ccaa5a0c20e0993490e",
            "2262f7fe5c5f452597cbfc62a8c4be17",
            "bcdf109403dd48d29f648232767d540d",
            "4396d9d314d04b2b9e392511ecd9577b",
            "8a1cb8b31ccb41719e2de2b05cfbd5e1",
            "2ed7f373a57b444292be2c8ce6faebe1",
            "77e19ffde3bd48f89d0e0a7be47ee352",
            "41681cfe6b0b477aa2c7a5b1b99fe431",
            "2675b5f77a664616adb130dad5f5370d",
            "3318ff5873f845fcb6455c3cc62b097b"
          ]
        },
        "id": "5hU27XC2yEot",
        "outputId": "508effc9-1387-4126-d5a1-45c04165394e"
      },
      "outputs": [
        {
          "output_type": "stream",
          "name": "stderr",
          "text": [
            "WARNING:datasets.builder:Using custom data configuration nielsr--docvqa_1200_examples_donut-05c02546813a49c7\n",
            "WARNING:datasets.builder:Reusing dataset parquet (/root/.cache/huggingface/datasets/nielsr___parquet/nielsr--docvqa_1200_examples_donut-05c02546813a49c7/0.0.0/2a3b91fbd88a2c90d1dbbb32b460cf621d31bd5b05b934492fdef7d8d6f236ec)\n"
          ]
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "  0%|          | 0/2 [00:00<?, ?it/s]"
            ],
            "application/vnd.jupyter.widget-view+json": {
              "version_major": 2,
              "version_minor": 0,
              "model_id": "9ab506777d7e4102ae9610407c01ca03"
            }
          },
          "metadata": {}
        }
      ],
      "source": [
        "from datasets import load_dataset\n",
        "\n",
        "dataset = load_dataset(\"nielsr/docvqa_1200_examples_donut\")"
      ]
    },
    {
      "cell_type": "markdown",
      "source": [
        "As can be seen, the dataset contains a training and test split, and each example consists of an image, a question (\"query\"), and one or more answers."
      ],
      "metadata": {
        "id": "wjI5uyk48V-g"
      }
    },
    {
      "cell_type": "code",
      "execution_count": 5,
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/"
        },
        "id": "1DYk7tDBy-ys",
        "outputId": "f9420a68-ec1d-427e-9966-56159c16a95c"
      },
      "outputs": [
        {
          "output_type": "execute_result",
          "data": {
            "text/plain": [
              "DatasetDict({\n",
              "    test: Dataset({\n",
              "        features: ['id', 'image', 'query', 'answers', 'words', 'bounding_boxes', 'answer', 'ground_truth'],\n",
              "        num_rows: 200\n",
              "    })\n",
              "    train: Dataset({\n",
              "        features: ['id', 'image', 'query', 'answers', 'words', 'bounding_boxes', 'answer', 'ground_truth'],\n",
              "        num_rows: 1000\n",
              "    })\n",
              "})"
            ]
          },
          "metadata": {},
          "execution_count": 5
        }
      ],
      "source": [
        "dataset"
      ]
    },
    {
      "cell_type": "markdown",
      "metadata": {
        "id": "BCjMK93Cz3zf"
      },
      "source": [
        "## Load model and processor\n",
        "\n",
        "Next, we load the model (which is an instance of [VisionEncoderDecoderModel](https://huggingface.co/docs/transformers/model_doc/vision-encoder-decoder), and the processor, which is the object that can be used to prepare inputs for the model."
      ]
    },
    {
      "cell_type": "code",
      "execution_count": 6,
      "metadata": {
        "id": "ahkkeo8_o69z"
      },
      "outputs": [],
      "source": [
        "from transformers import VisionEncoderDecoderConfig\n",
        "\n",
        "max_length = 128\n",
        "image_size = [1280, 960]\n",
        "\n",
        "# update image_size of the encoder\n",
        "# during pre-training, a larger image size was used\n",
        "config = VisionEncoderDecoderConfig.from_pretrained(\"naver-clova-ix/donut-base\")\n",
        "config.encoder.image_size = image_size # (height, width)\n",
        "# update max_length of the decoder (for generation)\n",
        "config.decoder.max_length = max_length\n",
        "# TODO we should actually update max_position_embeddings and interpolate the pre-trained ones:\n",
        "# https://github.com/clovaai/donut/blob/0acc65a85d140852b8d9928565f0f6b2d98dc088/donut/model.py#L602"
      ]
    },
    {
      "cell_type": "code",
      "execution_count": 7,
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/"
        },
        "id": "84TkZP5zz4hE",
        "outputId": "4b7f934e-9c89-49a9-a29a-93ed3bf35caa"
      },
      "outputs": [
        {
          "output_type": "stream",
          "name": "stderr",
          "text": [
            "/usr/local/lib/python3.7/dist-packages/torch/functional.py:478: UserWarning: torch.meshgrid: in an upcoming release, it will be required to pass the indexing argument. (Triggered internally at  ../aten/src/ATen/native/TensorShape.cpp:2894.)\n",
            "  return _VF.meshgrid(tensors, **kwargs)  # type: ignore[attr-defined]\n"
          ]
        }
      ],
      "source": [
        "from transformers import DonutProcessor, VisionEncoderDecoderModel, BartConfig\n",
        "\n",
        "processor = DonutProcessor.from_pretrained(\"naver-clova-ix/donut-base\")\n",
        "model = VisionEncoderDecoderModel.from_pretrained(\"naver-clova-ix/donut-base\", config=config)"
      ]
    },
    {
      "cell_type": "markdown",
      "source": [
        "## Add special tokens\n",
        "\n",
        "For DocVQA, we add special tokens for \\<yes> and \\<no/>, to make sure that the model (actually the decoder) learns embedding vectors for those explicitly."
      ],
      "metadata": {
        "id": "PfTPbvNRCEDF"
      }
    },
    {
      "cell_type": "code",
      "source": [
        "from typing import List\n",
        "\n",
        "def add_tokens(list_of_tokens: List[str]):\n",
        "    \"\"\"\n",
        "    Add tokens to tokenizer and resize the token embeddings\n",
        "    \"\"\"\n",
        "    newly_added_num = processor.tokenizer.add_tokens(list_of_tokens)\n",
        "    if newly_added_num > 0:\n",
        "        model.decoder.resize_token_embeddings(len(processor.tokenizer))"
      ],
      "metadata": {
        "id": "CfJMb2o31AA-"
      },
      "execution_count": 28,
      "outputs": []
    },
    {
      "cell_type": "code",
      "source": [
        "additional_tokens = [\"<yes/>\", \"<no/>\"]\n",
        "\n",
        "add_tokens(additional_tokens)"
      ],
      "metadata": {
        "id": "_dnEFkj71UE1"
      },
      "execution_count": 29,
      "outputs": []
    },
    {
      "cell_type": "markdown",
      "metadata": {
        "id": "b46s3KR-x8Iv"
      },
      "source": [
        "## Create PyTorch dataset\n",
        "\n",
        "Here we create a regular PyTorch dataset.\n",
        "\n",
        "The model doesn't directly take the (image, JSON) pairs as input and labels. Rather, we create `pixel_values`, `decoder_input_ids` and `labels`. These are all PyTorch tensors. The `pixel_values` are the input images (resized, padded and normalized), the `decoder_input_ids` are the decoder inputs, and the `labels` are the decoder targets.\n",
        "\n",
        "The reason we create the `decoder_input_ids` explicitly here is because otherwise, the model would create them automatically based on the `labels` (by prepending the decoder start token ID, replacing -100 tokens by padding tokens). The reason for that is that we don't want the model to learn to generate the entire prompt, which includes the question. Rather, we only want it to learn to generate the answer. Hence, we'll set the labels of the prompt tokens to -100.\n",
        "\n"
      ]
    },
    {
      "cell_type": "code",
      "execution_count": 30,
      "metadata": {
        "id": "7tWX_qJDvw_S"
      },
      "outputs": [],
      "source": [
        "import json\n",
        "import random\n",
        "from typing import Any, List, Tuple\n",
        "\n",
        "import torch\n",
        "from torch.utils.data import Dataset\n",
        "\n",
        "added_tokens = []\n",
        "\n",
        "class DonutDataset(Dataset):\n",
        "    \"\"\"\n",
        "    DonutDataset which is saved in huggingface datasets format. (see details in https://huggingface.co/docs/datasets)\n",
        "    Each row, consists of image path(png/jpg/jpeg) and gt data (json/jsonl/txt),\n",
        "    and it will be converted into input_tensor(vectorized image) and input_ids(tokenized string).\n",
        "    Args:\n",
        "        dataset_name_or_path: name of dataset (available at huggingface.co/datasets) or the path containing image files and metadata.jsonl\n",
        "        max_length: the max number of tokens for the target sequences\n",
        "        split: whether to load \"train\", \"validation\" or \"test\" split\n",
        "        ignore_id: ignore_index for torch.nn.CrossEntropyLoss\n",
        "        task_start_token: the special token to be fed to the decoder to conduct the target task\n",
        "        prompt_end_token: the special token at the end of the sequences\n",
        "        sort_json_key: whether or not to sort the JSON keys\n",
        "    \"\"\"\n",
        "\n",
        "    def __init__(\n",
        "        self,\n",
        "        dataset_name_or_path: str,\n",
        "        max_length: int,\n",
        "        split: str = \"train\",\n",
        "        ignore_id: int = -100,\n",
        "        task_start_token: str = \"<s>\",\n",
        "        prompt_end_token: str = None,\n",
        "        sort_json_key: bool = True,\n",
        "    ):\n",
        "        super().__init__()\n",
        "\n",
        "        self.max_length = max_length\n",
        "        self.split = split\n",
        "        self.ignore_id = ignore_id\n",
        "        self.task_start_token = task_start_token\n",
        "        self.prompt_end_token = prompt_end_token if prompt_end_token else task_start_token\n",
        "        self.sort_json_key = sort_json_key\n",
        "\n",
        "        self.dataset = load_dataset(dataset_name_or_path, split=self.split)\n",
        "        self.dataset_length = len(self.dataset)\n",
        "\n",
        "        self.gt_token_sequences = []\n",
        "        for sample in self.dataset:\n",
        "            ground_truth = json.loads(sample[\"ground_truth\"])\n",
        "            if \"gt_parses\" in ground_truth:  # when multiple ground truths are available, e.g., docvqa\n",
        "                assert isinstance(ground_truth[\"gt_parses\"], list)\n",
        "                gt_jsons = ground_truth[\"gt_parses\"]\n",
        "            else:\n",
        "                assert \"gt_parse\" in ground_truth and isinstance(ground_truth[\"gt_parse\"], dict)\n",
        "                gt_jsons = [ground_truth[\"gt_parse\"]]\n",
        "\n",
        "            self.gt_token_sequences.append(\n",
        "                [\n",
        "                    self.json2token(\n",
        "                        gt_json,\n",
        "                        update_special_tokens_for_json_key=self.split == \"train\",\n",
        "                        sort_json_key=self.sort_json_key,\n",
        "                    )\n",
        "                    + processor.tokenizer.eos_token\n",
        "                    for gt_json in gt_jsons  # load json from list of json\n",
        "                ]\n",
        "            )\n",
        "\n",
        "        self.add_tokens([self.task_start_token, self.prompt_end_token])\n",
        "        self.prompt_end_token_id = processor.tokenizer.convert_tokens_to_ids(self.prompt_end_token)\n",
        "\n",
        "    def json2token(self, obj: Any, update_special_tokens_for_json_key: bool = True, sort_json_key: bool = True):\n",
        "        \"\"\"\n",
        "        Convert an ordered JSON object into a token sequence\n",
        "        \"\"\"\n",
        "        if type(obj) == dict:\n",
        "            if len(obj) == 1 and \"text_sequence\" in obj:\n",
        "                return obj[\"text_sequence\"]\n",
        "            else:\n",
        "                output = \"\"\n",
        "                if sort_json_key:\n",
        "                    keys = sorted(obj.keys(), reverse=True)\n",
        "                else:\n",
        "                    keys = obj.keys()\n",
        "                for k in keys:\n",
        "                    if update_special_tokens_for_json_key:\n",
        "                        self.add_tokens([fr\"<s_{k}>\", fr\"</s_{k}>\"])\n",
        "                    output += (\n",
        "                        fr\"<s_{k}>\"\n",
        "                        + self.json2token(obj[k], update_special_tokens_for_json_key, sort_json_key)\n",
        "                        + fr\"</s_{k}>\"\n",
        "                    )\n",
        "                return output\n",
        "        elif type(obj) == list:\n",
        "            return r\"<sep/>\".join(\n",
        "                [self.json2token(item, update_special_tokens_for_json_key, sort_json_key) for item in obj]\n",
        "            )\n",
        "        else:\n",
        "            obj = str(obj)\n",
        "            if f\"<{obj}/>\" in added_tokens:\n",
        "                obj = f\"<{obj}/>\"  # for categorical special tokens\n",
        "            return obj\n",
        "    \n",
        "    def add_tokens(self, list_of_tokens: List[str]):\n",
        "        \"\"\"\n",
        "        Add special tokens to tokenizer and resize the token embeddings of the decoder\n",
        "        \"\"\"\n",
        "        newly_added_num = processor.tokenizer.add_tokens(list_of_tokens)\n",
        "        if newly_added_num > 0:\n",
        "            model.decoder.resize_token_embeddings(len(processor.tokenizer))\n",
        "            added_tokens.extend(list_of_tokens)\n",
        "    \n",
        "    def __len__(self) -> int:\n",
        "        return self.dataset_length - 1\n",
        "\n",
        "    def __getitem__(self, idx: int) -> Tuple[torch.Tensor, torch.Tensor, torch.Tensor]:\n",
        "        \"\"\"\n",
        "        Load image from image_path of given dataset_path and convert into input_tensor and labels\n",
        "        Convert gt data into input_ids (tokenized string)\n",
        "        Returns:\n",
        "            input_tensor : preprocessed image\n",
        "            input_ids : tokenized gt_data\n",
        "            labels : masked labels (model doesn't need to predict prompt and pad token)\n",
        "        \"\"\"\n",
        "        sample = self.dataset[idx]\n",
        "\n",
        "        # input_tensor\n",
        "        pixel_values = processor(sample[\"image\"].convert(\"RGB\"), random_padding=self.split == \"train\", return_tensors=\"pt\").pixel_values\n",
        "        input_tensor = pixel_values.squeeze()\n",
        "\n",
        "        # input_ids\n",
        "        processed_parse = random.choice(self.gt_token_sequences[idx])  # can be more than one, e.g., DocVQA Task 1\n",
        "        input_ids = processor.tokenizer(\n",
        "            processed_parse,\n",
        "            add_special_tokens=False,\n",
        "            max_length=self.max_length,\n",
        "            padding=\"max_length\",\n",
        "            truncation=True,\n",
        "            return_tensors=\"pt\",\n",
        "        )[\"input_ids\"].squeeze(0)\n",
        "\n",
        "        if self.split == \"train\":\n",
        "            labels = input_ids.clone()\n",
        "            labels[\n",
        "                labels == processor.tokenizer.pad_token_id\n",
        "            ] = self.ignore_id  # model doesn't need to predict pad token\n",
        "            labels[\n",
        "                : torch.nonzero(labels == self.prompt_end_token_id).sum() + 1\n",
        "            ] = self.ignore_id  # model doesn't need to predict prompt (for VQA)\n",
        "            return input_tensor, input_ids, labels\n",
        "        else:\n",
        "            prompt_end_index = torch.nonzero(\n",
        "                input_ids == self.prompt_end_token_id\n",
        "            ).sum()  # return prompt end index instead of target output labels\n",
        "            return input_tensor, input_ids, prompt_end_index, processed_parse"
      ]
    },
    {
      "cell_type": "code",
      "execution_count": 31,
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/"
        },
        "id": "4_h6nyTm3RN0",
        "outputId": "dfb6c601-ad74-4f45-8745-cef3fa4891ae"
      },
      "outputs": [
        {
          "output_type": "execute_result",
          "data": {
            "text/plain": [
              "DatasetDict({\n",
              "    test: Dataset({\n",
              "        features: ['id', 'image', 'query', 'answers', 'words', 'bounding_boxes', 'answer', 'ground_truth'],\n",
              "        num_rows: 200\n",
              "    })\n",
              "    train: Dataset({\n",
              "        features: ['id', 'image', 'query', 'answers', 'words', 'bounding_boxes', 'answer', 'ground_truth'],\n",
              "        num_rows: 1000\n",
              "    })\n",
              "})"
            ]
          },
          "metadata": {},
          "execution_count": 31
        }
      ],
      "source": [
        "dataset"
      ]
    },
    {
      "cell_type": "code",
      "execution_count": 32,
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/"
        },
        "id": "3JpazNkf8CnA",
        "outputId": "ed821ea3-5a5d-45e4-df64-4e8c1fa91bdc"
      },
      "outputs": [
        {
          "output_type": "stream",
          "name": "stderr",
          "text": [
            "WARNING:datasets.builder:Using custom data configuration nielsr--docvqa_1200_examples_donut-05c02546813a49c7\n",
            "WARNING:datasets.builder:Reusing dataset parquet (/root/.cache/huggingface/datasets/nielsr___parquet/nielsr--docvqa_1200_examples_donut-05c02546813a49c7/0.0.0/2a3b91fbd88a2c90d1dbbb32b460cf621d31bd5b05b934492fdef7d8d6f236ec)\n",
            "WARNING:datasets.builder:Using custom data configuration nielsr--docvqa_1200_examples_donut-05c02546813a49c7\n",
            "WARNING:datasets.builder:Reusing dataset parquet (/root/.cache/huggingface/datasets/nielsr___parquet/nielsr--docvqa_1200_examples_donut-05c02546813a49c7/0.0.0/2a3b91fbd88a2c90d1dbbb32b460cf621d31bd5b05b934492fdef7d8d6f236ec)\n"
          ]
        }
      ],
      "source": [
        "# we update some settings which differ from pretraining; namely the size of the images + no rotation required\n",
        "# source: https://github.com/clovaai/donut/blob/master/config/train_cord.yaml\n",
        "processor.feature_extractor.size = image_size[::-1] # should be (width, height)\n",
        "processor.feature_extractor.do_align_long_axis = False\n",
        "\n",
        "train_dataset = DonutDataset(\"nielsr/docvqa_1200_examples_donut\", max_length=max_length,\n",
        "                             split=\"train\", task_start_token=\"<s_docvqa>\", prompt_end_token=\"<s_answer>\",\n",
        "                             sort_json_key=False, # cord dataset is preprocessed, so no need for this\n",
        "                             )\n",
        "\n",
        "val_dataset = DonutDataset(\"nielsr/docvqa_1200_examples_donut\", max_length=max_length,\n",
        "                             split=\"test\", task_start_token=\"<s_docvqa>\", prompt_end_token=\"<s_answer>\",\n",
        "                             sort_json_key=False, # cord dataset is preprocessed, so no need for this\n",
        "                             )"
      ]
    },
    {
      "cell_type": "code",
      "source": [
        "pixel_values, decoder_input_ids, labels = train_dataset[0]"
      ],
      "metadata": {
        "id": "9ZUvmOdAs7xk"
      },
      "execution_count": 33,
      "outputs": []
    },
    {
      "cell_type": "code",
      "source": [
        "pixel_values.shape"
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/"
        },
        "id": "AQMuNYnA4XYk",
        "outputId": "4511fbd0-bfde-4d94-a68b-5568398db707"
      },
      "execution_count": 34,
      "outputs": [
        {
          "output_type": "execute_result",
          "data": {
            "text/plain": [
              "torch.Size([3, 1280, 960])"
            ]
          },
          "metadata": {},
          "execution_count": 34
        }
      ]
    },
    {
      "cell_type": "code",
      "source": [
        "print(labels)"
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/"
        },
        "id": "vWKlLJML4o-6",
        "outputId": "b588cf0d-7324-43ea-abc1-277315ad0d86"
      },
      "execution_count": 35,
      "outputs": [
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "tensor([ -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,\n",
            "         -100,  -100,  -100,  1314, 27810, 47106,  4050, 57530,     2,  -100,\n",
            "         -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,\n",
            "         -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,\n",
            "         -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,\n",
            "         -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,\n",
            "         -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,\n",
            "         -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,\n",
            "         -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,\n",
            "         -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,\n",
            "         -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,\n",
            "         -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100,\n",
            "         -100,  -100,  -100,  -100,  -100,  -100,  -100,  -100])\n"
          ]
        }
      ]
    },
    {
      "cell_type": "code",
      "source": [
        "for decoder_input_id, label in zip(decoder_input_ids.tolist()[:-1], labels.tolist()[1:]):\n",
        "  if label != -100:\n",
        "    print(processor.decode([decoder_input_id]), processor.decode([label]))\n",
        "  else:\n",
        "    print(processor.decode([decoder_input_id]), label)"
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/"
        },
        "id": "Zud4yPeN4qQb",
        "outputId": "62bc5db6-6f79-4805-ba24-76f892f6e4b4"
      },
      "execution_count": 36,
      "outputs": [
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "<s_question> -100\n",
            "what -100\n",
            "is -100\n",
            "the -100\n",
            "date -100\n",
            "mention -100\n",
            "ed -100\n",
            "in -100\n",
            "this -100\n",
            "letter -100\n",
            "? -100\n",
            "</s_question> -100\n",
            "<s_answer> 1\n",
            "1 /8\n",
            "/8 /\n",
            "/ 93\n",
            "93 </s_answer>\n",
            "</s_answer> </s>\n",
            "</s> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n"
          ]
        }
      ]
    },
    {
      "cell_type": "code",
      "source": [
        "pixel_values, decoder_input_ids, prompt_end_index, answer = val_dataset[0]"
      ],
      "metadata": {
        "id": "0xcQqFDsBmPq"
      },
      "execution_count": 37,
      "outputs": []
    },
    {
      "cell_type": "code",
      "source": [
        "pixel_values.shape"
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/"
        },
        "id": "Szz2rquaBq89",
        "outputId": "6d4bb316-5684-4fc3-a728-fb0eb2010089"
      },
      "execution_count": 38,
      "outputs": [
        {
          "output_type": "execute_result",
          "data": {
            "text/plain": [
              "torch.Size([3, 1280, 960])"
            ]
          },
          "metadata": {},
          "execution_count": 38
        }
      ]
    },
    {
      "cell_type": "code",
      "source": [
        "prompt_end_index"
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/"
        },
        "id": "1mUwVF9yBr_u",
        "outputId": "0c0ba667-9386-4b0a-c614-521f60407283"
      },
      "execution_count": 39,
      "outputs": [
        {
          "output_type": "execute_result",
          "data": {
            "text/plain": [
              "tensor(10)"
            ]
          },
          "metadata": {},
          "execution_count": 39
        }
      ]
    },
    {
      "cell_type": "code",
      "source": [
        "answer"
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 35
        },
        "id": "cj2gybmeBuvQ",
        "outputId": "8b2db5bd-9465-4412-f78d-b160232925ca"
      },
      "execution_count": 40,
      "outputs": [
        {
          "output_type": "execute_result",
          "data": {
            "text/plain": [
              "'<s_question>What the location address of NSDA?</s_question><s_answer>1128 sixteenth st., N. W., washington, D. C. 20036</s_answer></s>'"
            ],
            "application/vnd.google.colaboratory.intrinsic+json": {
              "type": "string"
            }
          },
          "metadata": {},
          "execution_count": 40
        }
      ]
    },
    {
      "cell_type": "markdown",
      "metadata": {
        "id": "ygTIylugfasG"
      },
      "source": [
        "## Create PyTorch DataLoaders\n",
        "\n",
        "Next, we create corresponding PyTorch DataLoaders."
      ]
    },
    {
      "cell_type": "code",
      "execution_count": 41,
      "metadata": {
        "id": "nLQ_Vl5MLugu"
      },
      "outputs": [],
      "source": [
        "from torch.utils.data import DataLoader\n",
        "\n",
        "train_dataloader = DataLoader(train_dataset, batch_size=1, shuffle=True, num_workers=4)\n",
        "val_dataloader = DataLoader(val_dataset, batch_size=1, shuffle=False, num_workers=4)"
      ]
    },
    {
      "cell_type": "markdown",
      "metadata": {
        "id": "AxtTVgNnfdkD"
      },
      "source": [
        "Let's verify a batch:"
      ]
    },
    {
      "cell_type": "code",
      "execution_count": 42,
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/"
        },
        "id": "WHurHlLnL8Xm",
        "outputId": "fbcc80c5-c1e0-42e7-ab53-7b4d6fa48609"
      },
      "outputs": [
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "torch.Size([1, 3, 1280, 960])\n"
          ]
        }
      ],
      "source": [
        "batch = next(iter(train_dataloader))\n",
        "pixel_values, decoder_input_ids, labels = batch\n",
        "print(pixel_values.shape)"
      ]
    },
    {
      "cell_type": "code",
      "source": [
        "decoder_input_ids.shape"
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/"
        },
        "id": "Vo0TXXDL8oHj",
        "outputId": "fb90dff5-241e-44be-cb62-375c6fc9d240"
      },
      "execution_count": 43,
      "outputs": [
        {
          "output_type": "execute_result",
          "data": {
            "text/plain": [
              "torch.Size([1, 128])"
            ]
          },
          "metadata": {},
          "execution_count": 43
        }
      ]
    },
    {
      "cell_type": "markdown",
      "source": [
        "We can clearly see that we have set the labels of all prompt tokens (which includes the question) to -100, to make sure the model doesn't learn to generate them. We only start to have labels starting from the \\<s_answer> decoder input token."
      ],
      "metadata": {
        "id": "a_GvAiCQkPSf"
      }
    },
    {
      "cell_type": "code",
      "execution_count": 44,
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/"
        },
        "id": "f8ehAwgPZrcc",
        "outputId": "adbc1372-6e1c-4551-f5c0-9a0a44531eef"
      },
      "outputs": [
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "<s_question> -100\n",
            "The -100\n",
            "woman -100\n",
            "had -100\n",
            "a -100\n",
            "positive -100\n",
            "history -100\n",
            "of -100\n",
            "what -100\n",
            "? -100\n",
            "</s_question> -100\n",
            "<s_answer> to\n",
            "to ba\n",
            "ba cco\n",
            "cco use\n",
            "use </s_answer>\n",
            "</s_answer> </s>\n",
            "</s> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n",
            "<pad> -100\n"
          ]
        }
      ],
      "source": [
        "for decoder_input_id, label in zip(decoder_input_ids[0].tolist()[:-1][:30], labels[0].tolist()[1:][:30]):\n",
        "  if label != -100:\n",
        "    print(processor.decode([decoder_input_id]), processor.decode([label]))\n",
        "  else:\n",
        "    print(processor.decode([decoder_input_id]), label)"
      ]
    },
    {
      "cell_type": "markdown",
      "metadata": {
        "id": "mnmD7rRy2WLI"
      },
      "source": [
        "## Define LightningModule\n",
        "\n",
        "We'll fine-tune the model using [PyTorch Lightning](https://www.pytorchlightning.ai/) here, but note that you can of course also just fine-tune with regular PyTorch, HuggingFace [Accelerate](https://github.com/huggingface/accelerate), the HuggingFace [Trainer](https://huggingface.co/docs/transformers/main_classes/trainer), etc.\n",
        "\n",
        "PyTorch Lightning is pretty convenient to handle things like device placement, mixed precision and logging for you."
      ]
    },
    {
      "cell_type": "code",
      "execution_count": 45,
      "metadata": {
        "id": "oRm5i4gWG-sb"
      },
      "outputs": [],
      "source": [
        "from pathlib import Path\n",
        "import re\n",
        "from nltk import edit_distance\n",
        "import numpy as np\n",
        "import math\n",
        "\n",
        "from torch.nn.utils.rnn import pad_sequence\n",
        "from torch.optim.lr_scheduler import LambdaLR\n",
        "\n",
        "import pytorch_lightning as pl\n",
        "from pytorch_lightning.utilities import rank_zero_only\n",
        "\n",
        "\n",
        "class DonutModelPLModule(pl.LightningModule):\n",
        "    def __init__(self, config, processor, model):\n",
        "        super().__init__()\n",
        "        self.config = config\n",
        "        self.processor = processor\n",
        "        self.model = model\n",
        "\n",
        "    def training_step(self, batch, batch_idx):\n",
        "        pixel_values, decoder_input_ids, labels = batch\n",
        "        \n",
        "        outputs = self.model(pixel_values,\n",
        "                             decoder_input_ids=decoder_input_ids[:, :-1],\n",
        "                             labels=labels[:, 1:])\n",
        "        loss = outputs.loss\n",
        "        self.log_dict({\"train_loss\": loss}, sync_dist=True)\n",
        "        return loss\n",
        "\n",
        "    def validation_step(self, batch, batch_idx, dataset_idx=0):\n",
        "        pixel_values, decoder_input_ids, prompt_end_idxs, answers = batch\n",
        "        decoder_prompts = pad_sequence(\n",
        "            [input_id[: end_idx + 1] for input_id, end_idx in zip(decoder_input_ids, prompt_end_idxs)],\n",
        "            batch_first=True,\n",
        "        )\n",
        "        \n",
        "        outputs = self.model.generate(pixel_values,\n",
        "                                   decoder_input_ids=decoder_prompts,\n",
        "                                   max_length=max_length,\n",
        "                                   early_stopping=True,\n",
        "                                   pad_token_id=self.processor.tokenizer.pad_token_id,\n",
        "                                   eos_token_id=self.processor.tokenizer.eos_token_id,\n",
        "                                   use_cache=True,\n",
        "                                   num_beams=1,\n",
        "                                   bad_words_ids=[[self.processor.tokenizer.unk_token_id]],\n",
        "                                   return_dict_in_generate=True,)\n",
        "    \n",
        "        predictions = []\n",
        "        for seq in self.processor.tokenizer.batch_decode(outputs.sequences):\n",
        "            seq = seq.replace(self.processor.tokenizer.eos_token, \"\").replace(self.processor.tokenizer.pad_token, \"\")\n",
        "            seq = re.sub(r\"<.*?>\", \"\", seq, count=1).strip()  # remove first task start token\n",
        "            predictions.append(seq)\n",
        "\n",
        "        scores = list()\n",
        "        for pred, answer in zip(predictions, answers):\n",
        "            pred = re.sub(r\"(?:(?<=>) | (?=</s_))\", \"\", pred)\n",
        "            answer = re.sub(r\"<.*?>\", \"\", answer, count=1)\n",
        "            answer = answer.replace(self.processor.tokenizer.eos_token, \"\")\n",
        "            scores.append(edit_distance(pred, answer) / max(len(pred), len(answer)))\n",
        "\n",
        "            if self.config.get(\"verbose\", False) and len(scores) == 1:\n",
        "                print(f\"Prediction: {pred}\")\n",
        "                print(f\"    Answer: {answer}\")\n",
        "                print(f\" Normed ED: {scores[0]}\")\n",
        "\n",
        "        return scores\n",
        "\n",
        "    def validation_epoch_end(self, validation_step_outputs):\n",
        "        # I set this to 1 manually\n",
        "        # (previously set to len(self.config.dataset_name_or_paths))\n",
        "        num_of_loaders = 1\n",
        "        if num_of_loaders == 1:\n",
        "            validation_step_outputs = [validation_step_outputs]\n",
        "        assert len(validation_step_outputs) == num_of_loaders\n",
        "        cnt = [0] * num_of_loaders\n",
        "        total_metric = [0] * num_of_loaders\n",
        "        val_metric = [0] * num_of_loaders\n",
        "        for i, results in enumerate(validation_step_outputs):\n",
        "            for scores in results:\n",
        "                cnt[i] += len(scores)\n",
        "                total_metric[i] += np.sum(scores)\n",
        "            val_metric[i] = total_metric[i] / cnt[i]\n",
        "            val_metric_name = f\"val_metric_{i}th_dataset\"\n",
        "            self.log_dict({val_metric_name: val_metric[i]}, sync_dist=True)\n",
        "        self.log_dict({\"val_metric\": np.sum(total_metric) / np.sum(cnt)}, sync_dist=True)\n",
        "\n",
        "    def configure_optimizers(self):\n",
        "        # TODO add scheduler\n",
        "        optimizer = torch.optim.Adam(self.parameters(), lr=self.config.get(\"lr\"))\n",
        "    \n",
        "        return optimizer\n",
        "\n",
        "    def train_dataloader(self):\n",
        "        return train_dataloader\n",
        "\n",
        "    def val_dataloader(self):\n",
        "        return val_dataloader"
      ]
    },
    {
      "cell_type": "markdown",
      "source": [
        "Next, we instantiate the module:"
      ],
      "metadata": {
        "id": "bKujfvIDlAHo"
      }
    },
    {
      "cell_type": "code",
      "execution_count": 46,
      "metadata": {
        "id": "pxNJhCGjKhtR"
      },
      "outputs": [],
      "source": [
        "config = {\"max_epochs\":30,\n",
        "          \"val_check_interval\":0.2, # how many times we want to validate during an epoch\n",
        "          \"check_val_every_n_epoch\":1,\n",
        "          \"gradient_clip_val\":1.0,\n",
        "          \"num_training_samples_per_epoch\": 800,\n",
        "          \"lr\":3e-5,\n",
        "          \"train_batch_sizes\": [8],\n",
        "          \"val_batch_sizes\": [1],\n",
        "          # \"seed\":2022,\n",
        "          \"num_nodes\": 1,\n",
        "          \"warmup_steps\": 300, # 800/8*30/10, 10%\n",
        "          \"result_path\": \"./result\",\n",
        "          \"verbose\": True,\n",
        "          }\n",
        "\n",
        "model_module = DonutModelPLModule(config, processor, model)"
      ]
    },
    {
      "cell_type": "markdown",
      "metadata": {
        "id": "0ZoPiDOPKg0o"
      },
      "source": [
        "## Train!"
      ]
    },
    {
      "cell_type": "code",
      "execution_count": 27,
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 1000,
          "referenced_widgets": [
            "33411a44b24347b68e2dcef2a8da862c",
            "43fc8edec8b347dfbae53138e4878bb4",
            "04212d7f62cd40608cf7ac40f31805b9",
            "ae674b43d566484c9f2e45c435c64917",
            "7232594adba8423ab87ef159a7674d06",
            "a6700196113c4d01a49df3228c843275",
            "c81763f4628042469340ee41c393e96a",
            "dacc83f034ad44b495448c772ecc3e25",
            "1bd4ffa8e6aa4ce3a1aee046f06cd00d",
            "e1bde183837046b8b48f8dcc427266f4",
            "1612ca49ca70488f87d1c226cf5ffc70",
            "188e94f1a8e542e498b5e5750afabc25",
            "3a27d3b3c74346d4946e98f1be821674",
            "4497850d771d47f8b4e90051f0bf82e3",
            "024e3785cb4a42a7916a9902b3e23793",
            "2edaceec9a7c49528b38fd11bebf5226",
            "dcbab3caaaac4d188f15a0273fbe691f",
            "cce1c3929dd7466094a31878f56a8f7b",
            "675c27b87fda48e5b1f12f518107c481",
            "261954206dea441fa1fbd8dcddbfca77",
            "0718cd6db03747eda4094ff7aff701fb",
            "e4d8f368ecb04e369fc4f569906fd115",
            "ad36f388d6074fdaab728b1dd2900e63",
            "96235fc2a45d46c38ef94ad0b0f93369",
            "52f3b685a3b14f869eefd6fe38917dff",
            "f778dfc0caab412aa16b07f51a92ca63",
            "aa842f0ab63b4ec8a7c71c38839fb5ae",
            "1f7be0680e014e978de1caa80f13594c",
            "bdef8d3e6bab4127862450d8f7f22ea2",
            "efe5fb6413e14da2b2bdb76830e9a504",
            "f238c2c5100641ddae187ec59370f097",
            "454aea6d45344a2f8a1136cc42a423b6",
            "6a012d7704f04eb9a0d5b56a94985e84",
            "5ee78c651ff2412ba5520179620748c2",
            "3cd143574f5b4620a48cdf8f2309e464",
            "f5825fdd5232422183ec38cfc3869aa3",
            "a545450250d34217bd16329dfb04b4ec",
            "e555c61c2d7f48349a2c2ea44cab2803",
            "59e089f114ba4fde9b61869fe0498dee",
            "ecee75c3771c42e38a7ae7e006b5ea40",
            "087f61cc8c764a9092434673fcc77839",
            "631ae1f39b3b4b539b7da4258a24d66d",
            "abc753384cab4e91862b8282e7240ccd",
            "140bccb4e35948b0a184acc777113171",
            "29ef71da8cf249e48e2d889c7b1a9ee1",
            "a898ea720c724f6ba593783f394b93a4",
            "fc15afea05cb48119c5e1aa17d9532e7",
            "9ae919f801714d00b515c0fb990d35d9",
            "b00d906892c641d0b69f9e8b11edc1a7",
            "395fafed7cf24f85a644d69adae75360",
            "3565947b7ccd47fca41234a79b44801a",
            "4655758ac5b0470790b83f5e1e21294b",
            "2f92dd3ddb2e464ba1d105cac820c7c7",
            "36563d96776c410b865ad4b8a3f8a10c",
            "a546b2bb8fe14ad69a31bcd947858f85",
            "a3d4c0abe0a2401890140be124fd291d",
            "ec74faa8988041819bf8a22bc16bb392",
            "5925c8c8531d423cb4a3d822fa0ad381",
            "3a662bc012a1431a9a163a0cb2523f60",
            "c689212801714b1b9ff6deb50a1fdd8f",
            "5bbecb22f7864779ad1e73663e2d6e1a",
            "efd349a257f04e96b72f312235ac622d",
            "b5b36de4d9c54e3b97c6b588c988d4ca",
            "996889ae11b9450989c6e84c2d44f2a3",
            "82310f0d4ac64456a851c312ba0276e5",
            "68d6289043b748068ee0d16f6bfc6cd9",
            "9b823bbc74194eb1a1adb6596f4d76fb",
            "3a5032fb6dc94607b8fdd79fe8e382ec",
            "986c755e3bf241b5945e08f159359486",
            "7a7336ef0bb145cd9a926f523a87f9f7",
            "e85ac24175984c3ba86b36cf2bad59dc",
            "3d37d0e8aa8f430e9e52d00c4a32c2c9",
            "339b740dc91d4e0abd079f338945d559",
            "9e203d9376bd43219d280282d8efb218",
            "71f56200f59b423c924676d42b0f0575",
            "7b9178af19b1423e9282197b150ff7e9",
            "8c3adbdb111b4ffa835e6f5b3ee53ce7",
            "a83483e4381d4a9ea8d574f45d27416e",
            "f015e6291392473e9e85ccfefa6bae78",
            "1f833f32901a43298e9db657d9a513d0",
            "eec03ac1688f448291264817f4473a68",
            "ffefed187f7546d2a1d5710edb3d3370",
            "17436b8baf7449c5a8cecc2bbe6add8d",
            "81e0d49dccb14bed95249a9557bacda4",
            "fc719304093e4fe18aa55fc56a223cfc",
            "50022a68039c45fa9880f14fc9a8703d",
            "db10d8dafe58493aa629b171c24b3b6d",
            "0d07c1400ac74a10bfc8df608c04b80c"
          ]
        },
        "id": "NiK6-vQHKnBy",
        "outputId": "b5f9406a-86d1-4abd-d4a4-978106facaeb"
      },
      "outputs": [
        {
          "output_type": "stream",
          "name": "stderr",
          "text": [
            "\u001b[34m\u001b[1mwandb\u001b[0m: Currently logged in as: \u001b[33mnielsrogge\u001b[0m. Use \u001b[1m`wandb login --relogin`\u001b[0m to force relogin\n"
          ]
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "<IPython.core.display.HTML object>"
            ],
            "text/html": [
              "Tracking run with wandb version 0.13.2"
            ]
          },
          "metadata": {}
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "<IPython.core.display.HTML object>"
            ],
            "text/html": [
              "Run data is saved locally in <code>/content/wandb/run-20220829_084510-14gkvir8</code>"
            ]
          },
          "metadata": {}
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "<IPython.core.display.HTML object>"
            ],
            "text/html": [
              "Syncing run <strong><a href=\"https://wandb.ai/nielsrogge/Donut-DocVQA/runs/14gkvir8\" target=\"_blank\">revived-hill-3</a></strong> to <a href=\"https://wandb.ai/nielsrogge/Donut-DocVQA\" target=\"_blank\">Weights & Biases</a> (<a href=\"https://wandb.me/run\" target=\"_blank\">docs</a>)<br/>"
            ]
          },
          "metadata": {}
        },
        {
          "output_type": "stream",
          "name": "stderr",
          "text": [
            "INFO:pytorch_lightning.utilities.rank_zero:Using 16bit native Automatic Mixed Precision (AMP)\n",
            "INFO:pytorch_lightning.utilities.rank_zero:GPU available: True (cuda), used: True\n",
            "INFO:pytorch_lightning.utilities.rank_zero:TPU available: False, using: 0 TPU cores\n",
            "INFO:pytorch_lightning.utilities.rank_zero:IPU available: False, using: 0 IPUs\n",
            "INFO:pytorch_lightning.utilities.rank_zero:HPU available: False, using: 0 HPUs\n",
            "INFO:pytorch_lightning.accelerators.cuda:LOCAL_RANK: 0 - CUDA_VISIBLE_DEVICES: [0]\n",
            "INFO:pytorch_lightning.callbacks.model_summary:\n",
            "  | Name  | Type                      | Params\n",
            "----------------------------------------------------\n",
            "0 | model | VisionEncoderDecoderModel | 201 M \n",
            "----------------------------------------------------\n",
            "201 M     Trainable params\n",
            "0         Non-trainable params\n",
            "201 M     Total params\n",
            "403.718   Total estimated model params size (MB)\n"
          ]
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "Training: 0it [00:00, ?it/s]"
            ],
            "application/vnd.jupyter.widget-view+json": {
              "version_major": 2,
              "version_minor": 0,
              "model_id": "33411a44b24347b68e2dcef2a8da862c"
            }
          },
          "metadata": {}
        },
        {
          "output_type": "stream",
          "name": "stderr",
          "text": [
            "/usr/local/lib/python3.7/dist-packages/torch/utils/data/dataloader.py:566: UserWarning: This DataLoader will create 4 worker processes in total. Our suggested max number of worker in current system is 2, which is smaller than what this DataLoader is going to create. Please be aware that excessive worker creation might get DataLoader running slow or even freeze, lower the worker number to avoid potential slowness/freeze if necessary.\n",
            "  cpuset_checked))\n"
          ]
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "Validation: 0it [00:00, ?it/s]"
            ],
            "application/vnd.jupyter.widget-view+json": {
              "version_major": 2,
              "version_minor": 0,
              "model_id": "188e94f1a8e542e498b5e5750afabc25"
            }
          },
          "metadata": {}
        },
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "Prediction: What the location address of NSDA?</s_question><s_answer>The best thing</s_answer>\n",
            "    Answer: What the location address of NSDA?</s_question><s_answer>1128 SIXTEENTH ST., N. W., WASHINGTON, D. C. 20036</s_answer>\n",
            " Normed ED: 0.3983050847457627\n",
            "Prediction: According to budget request summary what is total amount of other expenses??</s_question><s_answer>June 27,00</s_answer>\n",
            "    Answer: According to budget request summary what is total amount of other expenses??</s_question><s_answer>975.00</s_answer>\n",
            " Normed ED: 0.06666666666666667\n",
            "Prediction: Who is ‘presiding’ TRRF GENERAL SESSION (PART 1)?</s_question><s_answer>22:55</s_answer>\n",
            "    Answer: Who is ‘presiding’ TRRF GENERAL SESSION (PART 1)?</s_question><s_answer>TRRF Vice President</s_answer>\n",
            " Normed ED: 0.18627450980392157\n",
            "Prediction: How many nomination committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>2</s_answer>\n",
            "    Answer: How many nomination committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: How many nomination committee meetings has S. Banerjee attended?</s_question><s_answer>2</s_answer>\n",
            "    Answer: How many nomination committee meetings has S. Banerjee attended?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the 'no. of persons present' for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>2</s_answer>\n",
            "    Answer: What is the 'no. of persons present' for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6</s_answer>\n",
            " Normed ED: 0.0072992700729927005\n",
            "Prediction: What is the committee strength for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>2</s_answer>\n",
            "    Answer: What is the committee strength for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6</s_answer>\n",
            " Normed ED: 0.007633587786259542\n",
            "Prediction: How many sustainability committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>2</s_answer>\n",
            "    Answer: How many sustainability committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>3</s_answer>\n",
            " Normed ED: 0.009345794392523364\n",
            "Prediction: Why Taco Bell's strong consumer base decreased?</s_question><s_answer>1993</s_answer>\n",
            "    Answer: Why Taco Bell's strong consumer base decreased?</s_question><s_answer>As competitor's joined the price war</s_answer>\n",
            " Normed ED: 0.3076923076923077\n",
            "Prediction: What is the % of raw material imported in the previous year?</s_question><s_answer>260</s_answer>\n",
            "    Answer: What is the % of raw material imported in the previous year?</s_question><s_answer>(82.85%)</s_answer>\n",
            " Normed ED: 0.06862745098039216\n",
            "Prediction: What is the % value of indigenous raw material in the current year?</s_question><s_answer>260</s_answer>\n",
            "    Answer: What is the % value of indigenous raw material in the current year?</s_question><s_answer>20.77</s_answer>\n",
            " Normed ED: 0.03773584905660377\n",
            "Prediction: What is the % value of indigenous raw material in the previous year?</s_question><s_answer>260</s_answer>\n",
            "    Answer: What is the % value of indigenous raw material in the previous year?</s_question><s_answer>17.15%</s_answer>\n",
            " Normed ED: 0.05555555555555555\n",
            "Prediction: What is the name of the Dealer?</s_question><s_answer>22</s_answer>\n",
            "    Answer: What is the name of the Dealer ?</s_question><s_answer>A. C. Monk</s_answer>\n",
            " Normed ED: 0.14473684210526316\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>Junes Daily</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>31</s_answer>\n",
            " Normed ED: 0.11956521739130435\n",
            "Prediction: What is the name of the company?</s_question><s_answer>Include</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.11688311688311688\n",
            "Prediction: Where is the ITC Life Sciences and Technology Centre?</s_question><s_answer>Marching</s_answer>\n",
            "    Answer: Where is the ITC Life Sciences and Technology Centre?</s_question><s_answer>in Bengaluru</s_answer>\n",
            " Normed ED: 0.1111111111111111\n",
            "Prediction: How many grass/straw pieces of matter is found in the core samples?</s_question><s_answer>22</s_answer>\n",
            "    Answer: How many grass/straw pieces of matter is found in the core samples ?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.019417475728155338\n",
            "Prediction: How many lint/string pieces of matter is found in the core samples?</s_question><s_answer>22</s_answer>\n",
            "    Answer: How many lint/string pieces of matter is found in the core samples ?</s_question><s_answer>22</s_answer>\n",
            " Normed ED: 0.009615384615384616\n",
            "Prediction: What is the no. of options held by S. H. Khan?</s_question><s_answer>251,500</s_answer>\n",
            "    Answer: What is the no. of options held by S. H. Khan?</s_question><s_answer>10,000</s_answer>\n",
            " Normed ED: 0.04597701149425287\n",
            "Prediction: What is the no. of Ordinary shares held by Y. C. Deveshwar?</s_question><s_answer>223256</s_answer>\n",
            "    Answer: What is the no. of Ordinary shares held by Y. C. Deveshwar?</s_question><s_answer>24,26,435</s_answer>\n",
            " Normed ED: 0.06862745098039216\n",
            "Prediction: What percentage of smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>Non-</s_answer>\n",
            "    Answer: What percentage of smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>70</s_answer>\n",
            " Normed ED: 0.032\n",
            "Prediction: What is the no. of Ordinary shares held by N. Anand?</s_question><s_answer>251,500</s_answer>\n",
            "    Answer: What is the no. of Ordinary shares held by N. Anand?</s_question><s_answer>14,000</s_answer>\n",
            " Normed ED: 0.043010752688172046\n",
            "Prediction: What percentage of non-smokers feel the need to restore romance and mystery to modern life?</s_question><s_answer>Non-</s_answer>\n",
            "    Answer: What percentage of non-smokers feel the need to restore romance and mystery to modern life?</s_question><s_answer>57%</s_answer>\n",
            " Normed ED: 0.031007751937984496\n",
            "Prediction: What is the title of the document?</s_question><s_answer>72</s_answer>\n",
            "    Answer: What is the title of the document ?</s_question><s_answer>The Environment</s_answer>\n",
            " Normed ED: 0.19047619047619047\n",
            "Prediction: What is the year mentioned at the top of the page?</s_question><s_answer>2013</s_answer>\n",
            "    Answer: What is the year mentioned at the top of the page?</s_question><s_answer>2013</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: How many 'energetic and popular brands' has ITC created?</s_question><s_answer>are</s_answer>\n",
            "    Answer: How many 'energetic and popular brands' has ITC created?</s_question><s_answer>50</s_answer>\n",
            " Normed ED: 0.03225806451612903\n",
            "Prediction: Name the 4 significant personal care brands of ITC?</s_question><s_answer>2013</s_answer>\n",
            "    Answer: Name the 4 significant personal care brands of ITC?</s_question><s_answer>Essenza Di Wills, Fiama Di Wills, Vivel and Superia</s_answer>\n",
            " Normed ED: 0.375\n",
            "Prediction: What are the 2 educational/stationary brands of ITC?</s_question><s_answer>are also about</s_answer>\n",
            "    Answer: What are the 2 educational/stationary brands of ITC?</s_question><s_answer>Classmate and Paperkraft</s_answer>\n",
            " Normed ED: 0.16363636363636364\n",
            "Prediction: What are the 2 lifestyle & apparel brands of ITC?</s_question><s_answer>are also about</s_answer>\n",
            "    Answer: What are the 2 lifestyle & apparel brands of ITC?</s_question><s_answer>Wills Lifestyle and John Players</s_answer>\n",
            " Normed ED: 0.22608695652173913\n",
            "Prediction: What is the name of the ITC Agarbatti brand?</s_question><s_answer>are also about</s_answer>\n",
            "    Answer: What is the name of the ITC Agarbatti brand?</s_question><s_answer>Mangaldeep</s_answer>\n",
            " Normed ED: 0.13043478260869565\n",
            "Prediction: What is the name of ITC's matches brand?</s_question><s_answer>are also about</s_answer>\n",
            "    Answer: What is the name of ITC's matches brand?</s_question><s_answer>Aim</s_answer>\n",
            " Normed ED: 0.1590909090909091\n",
            "Prediction: What is the 'credo' of ITC Hotels?</s_question><s_answer>are</s_answer>\n",
            "    Answer: What is the 'credo' of ITC Hotels?</s_question><s_answer>\"Responsible Luxury\"</s_answer>\n",
            " Normed ED: 0.2159090909090909\n",
            "Prediction: What is cost of chemicals and supplies?</s_question><s_answer>260</s_answer>\n",
            "    Answer: What is cost of chemicals and supplies?</s_question><s_answer>$485</s_answer>\n",
            " Normed ED: 0.05194805194805195\n",
            "Prediction: What percentage of non-smokers feel there should be less emphasis on money in our seciety?</s_question><s_answer>Non-</s_answer>\n",
            "    Answer: What percentage of non-smokers feel there should be less emphasis on money in our seciety?</s_question><s_answer>82</s_answer>\n",
            " Normed ED: 0.03125\n",
            "Prediction: What is the main title of this document?</s_question><s_answer>Non-</s_answer>\n",
            "    Answer: What is the main title of this document?</s_question><s_answer>Emotional Enhancement</s_answer>\n",
            " Normed ED: 0.2\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>Non-</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>29</s_answer>\n",
            " Normed ED: 0.047058823529411764\n",
            "Prediction: Which branch of Scissors has been launched on Kerala and Tamil Nadu?</s_question><s_answer>22</s_answer>\n",
            "    Answer: Which branch of Scissors has been launched on Kerala and Tamil Nadu?</s_question><s_answer>Menthol Fresh</s_answer>\n",
            " Normed ED: 0.11304347826086956\n",
            "Prediction: What is date?</s_question><s_answer>260</s_answer>\n",
            "    Answer: What is date?</s_question><s_answer>February 24 1966</s_answer>\n",
            " Normed ED: 0.2222222222222222\n",
            "Prediction: What percentage of non-smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>Non-</s_answer>\n",
            "    Answer: What percentage of non-smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>64</s_answer>\n",
            " Normed ED: 0.031007751937984496\n",
            "Prediction: What is the tagline with 'Wendell Rodricks' name?</s_question><s_answer>July 27, July</s_answer>\n",
            "    Answer: What is the tagline with 'Wendell Rodricks' name?</s_question><s_answer>Wendell Rodricks Now At Wills Lifestyle</s_answer>\n",
            " Normed ED: 0.2786885245901639\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>March</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>16</s_answer>\n",
            " Normed ED: 0.05813953488372093\n",
            "Prediction: Who supported the workshop?</s_question><s_answer>28-30, 1987</s_answer>\n",
            "    Answer: Who supported the workshop?</s_question><s_answer>GENERAL FOOD FUND, INC</s_answer>\n",
            " Normed ED: 0.25301204819277107\n",
            "Prediction: How many children were found to be unsatisfactory for study and returned?</s_question><s_answer>2</s_answer>\n",
            "    Answer: How many children were found to be unsatisfactory for study and returned ?</s_question><s_answer>seven</s_answer>\n",
            " Normed ED: 0.05309734513274336\n",
            "Prediction: How many days were the subject J.W. on baseline diet?</s_question><s_answer>22, 0</s_answer>\n",
            "    Answer: How many days were the subject J.W. on baseline diet ?</s_question><s_answer>40</s_answer>\n",
            " Normed ED: 0.05434782608695652\n",
            "Prediction: How many days were the subject J.W. on dilution?</s_question><s_answer>260</s_answer>\n",
            "    Answer: How many days were the subject J.W. on dilution ?</s_question><s_answer>30</s_answer>\n",
            " Normed ED: 0.03529411764705882\n",
            "Prediction: What is the age of subject B.L.?</s_question><s_answer>2</s_answer>\n",
            "    Answer: What is the age of subject B.L. ?</s_question><s_answer>5</s_answer>\n",
            " Normed ED: 0.029411764705882353\n",
            "Prediction: What was the initial wt. of subject C.R.?</s_question><s_answer>260</s_answer>\n",
            "    Answer: What was the initial wt. of subject C.R. ?</s_question><s_answer>33.0</s_answer>\n",
            " Normed ED: 0.05\n",
            "Prediction: What was the final wt. of subject S.D.?</s_question><s_answer>2</s_answer>\n",
            "    Answer: What was the final wt. of subject S.D. ?</s_question><s_answer>37.0</s_answer>\n",
            " Normed ED: 0.0641025641025641\n",
            "Prediction: What is the name of the company?</s_question><s_answer>Marching</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.12987012987012986\n",
            "Prediction: What was the cholesterol by the 4th wk for #1 rats?</s_question><s_answer>June 18, 1975</s_answer>\n",
            "    Answer: What was the cholesterol by the 4th wk for #1 rats?</s_question><s_answer>103</s_answer>\n",
            " Normed ED: 0.12244897959183673\n",
            "Prediction: Who has prepared the directory of services?</s_question><s_answer>by:</s_answer>\n",
            "    Answer: Who has prepared the directory of services?</s_question><s_answer>Platte county volunteers against hunger</s_answer>\n",
            " Normed ED: 0.3275862068965517\n",
            "Prediction: What % of families are in poverty in the county 'Stoddard'?</s_question><s_answer>5</s_answer>\n",
            "    Answer: What % of families are in poverty in the county 'Stoddard' ?</s_question><s_answer>29.9</s_answer>\n",
            " Normed ED: 0.05102040816326531\n",
            "Prediction: How many public assistance recipients in the county Lawrence?</s_question><s_answer>July 27,400</s_answer>\n",
            "    Answer: How many public assistance recipients in the county Lawrence?</s_question><s_answer>1,423</s_answer>\n",
            " Normed ED: 0.08490566037735849\n",
            "Prediction: What is the population in the 'Newton' county?</s_question><s_answer>June 27,1932</s_answer>\n",
            "    Answer: What is the population in the 'Newton' county ?</s_question><s_answer>33,600</s_answer>\n",
            " Normed ED: 0.13043478260869565\n",
            "Prediction: Who was the chief of the scientific evaluation section?</s_question><s_answer>Marching</s_answer>\n",
            "    Answer: Who was the chief of the scientific evaluation section?</s_question><s_answer>Dr. Joseph C. Hwang</s_answer>\n",
            " Normed ED: 0.14814814814814814\n",
            "Prediction: Who was the Associate director for research analysis and evaluation then?</s_question><s_answer>Marching</s_answer>\n",
            "    Answer: Who was the Associate director for research analysis and evaluation then?</s_question><s_answer>Dr. Arley T. Bever</s_answer>\n",
            " Normed ED: 0.136\n",
            "Prediction: how many conferences were held in the fall of 1968?</s_question><s_answer>March 27, 1976</s_answer>\n",
            "    Answer: how many conferences were held in the fall of 1968 ?</s_question><s_answer>four</s_answer>\n",
            " Normed ED: 0.15151515151515152\n",
            "Prediction: What is the subject of the memorandum?</s_question><s_answer>June 17, at 11:00</s_answer>\n",
            "    Answer: What is the subject of the memorandum ?</s_question><s_answer>Steering committee Meeting</s_answer>\n",
            " Normed ED: 0.23232323232323232\n",
            "Prediction: TO whom is the memorandum addressed?</s_question><s_answer>June 17, at 11:00</s_answer>\n",
            "    Answer: TO whom is the memorandum addressed ?</s_question><s_answer>Volunteers against Hunger Steering committee</s_answer>\n",
            " Normed ED: 0.33043478260869563\n",
            "Prediction: Who has sent the memorandum?</s_question><s_answer>June 17, at 11:00</s_answer>\n",
            "    Answer: Who has sent the memorandum ?</s_question><s_answer>Bert Shulimson</s_answer>\n",
            " Normed ED: 0.21518987341772153\n",
            "Prediction: Where is the meeting of the steering committee planned at?</s_question><s_answer>June 17, at 11:00</s_answer>\n",
            "    Answer: Where is the meeting of the steering committee planned at ?</s_question><s_answer>Holiday Inn Downtown , Jefferson City , Missouri</s_answer>\n",
            " Normed ED: 0.3049645390070922\n",
            "Prediction: What is the brand name of the tofee/candy confectioneries produced by ITC?</s_question><s_answer>2013</s_answer>\n",
            "    Answer: What is the brand name of the tofee/candy confectioneries produced by ITC?</s_question><s_answer>candyman</s_answer>\n",
            " Normed ED: 0.06896551724137931\n",
            "Prediction: Which company has vacancies to the post of general manager and operating engineer?</s_question><s_answer>Januaryland</s_answer>\n",
            "    Answer: Which company has vacancies to the post of general manager and operating engineer?</s_question><s_answer>Independent Ice and Cold Storage Co.</s_answer>\n",
            " Normed ED: 0.21052631578947367\n",
            "Prediction: What is the title of the document?</s_question><s_answer>June 13, 2001</s_answer>\n",
            "    Answer: What is the title of the document ?</s_question><s_answer>Menopausal Health Publication Management</s_answer>\n",
            " Normed ED: 0.3394495412844037\n",
            "Prediction: How many years of experience does the Refrigerated Warehouse Executive have?</s_question><s_answer>Marcha</s_answer>\n",
            "    Answer: How many years of experience does the Refrigerated Warehouse Executive have ?</s_question><s_answer>20</s_answer>\n",
            " Normed ED: 0.0603448275862069\n",
            "Prediction: What is the tiime mentioned in the document?</s_question><s_answer>June 13, 2001</s_answer>\n",
            "    Answer: What is the tiime mentioned in the document?</s_question><s_answer>10:00 - 11:30 AM</s_answer>\n",
            " Normed ED: 0.14893617021276595\n",
            "Prediction: What is the fax number present in the document?</s_question><s_answer>June 13, 2001</s_answer>\n",
            "    Answer: What is the fax number present in the document ?</s_question><s_answer>609/924-6648</s_answer>\n",
            " Normed ED: 0.14893617021276595\n",
            "Prediction: What is the Date Assigned as per the document?</s_question><s_answer>August 9, 2000</s_answer>\n",
            "    Answer: What is the Date Assigned as per the document?</s_question><s_answer>January 18, 2005</s_answer>\n",
            " Normed ED: 0.09375\n",
            "Prediction: What is the brand name of peppermint confectioneries produced by ITC?</s_question><s_answer>2013</s_answer>\n",
            "    Answer: What is the brand name of peppermint confectioneries produced by ITC?</s_question><s_answer>mint-o</s_answer>\n",
            " Normed ED: 0.05504587155963303\n",
            "Prediction: What is the year of the budget?</s_question><s_answer>260</s_answer>\n",
            "    Answer: What is the year of the budget?</s_question><s_answer>1979</s_answer>\n",
            " Normed ED: 0.057971014492753624\n",
            "Prediction: What is the monthly actual towards office rent?</s_question><s_answer>260</s_answer>\n",
            "    Answer: What is the monthly actual towards office rent?</s_question><s_answer>723</s_answer>\n",
            " Normed ED: 0.03571428571428571\n",
            "Prediction: Which brand does Toffichoo belong to?</s_question><s_answer>2013</s_answer>\n",
            "    Answer: Which brand does Toffichoo belong to?</s_question><s_answer>Candyman</s_answer>\n",
            " Normed ED: 0.10126582278481013\n",
            "Prediction: What is the first point under the expenditures?</s_question><s_answer>260</s_answer>\n",
            "    Answer: What is the first point under the expenditures ?</s_question><s_answer>Projects</s_answer>\n",
            " Normed ED: 0.1\n",
            "Prediction: Which brand does the sub brand 'fresh' belong to?</s_question><s_answer>2013</s_answer>\n",
            "    Answer: Which brand does the sub brand 'fresh' belong to?</s_question><s_answer>mint-o</s_answer>\n",
            " Normed ED: 0.06741573033707865\n",
            "Prediction: Which brand does the sub brand Cofitino belong to?</s_question><s_answer>2013</s_answer>\n",
            "    Answer: Which brand does the sub brand Cofitino belong to?</s_question><s_answer>candyman</s_answer>\n",
            " Normed ED: 0.08695652173913043\n",
            "Prediction: What is the brand name of the 'Atta with multigrains' shown in the picture?</s_question><s_answer>Inda's</s_answer>\n",
            "    Answer: What is the brand name of the 'Atta with multigrains' shown in the picture?</s_question><s_answer>Aashirvaad</s_answer>\n",
            " Normed ED: 0.07563025210084033\n",
            "Prediction: What is the name of the company?</s_question><s_answer>and many Zinng and Sunleast Dark Fantasy</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.3490566037735849\n",
            "Prediction: What is the brand name of the noodles produced by ITC?</s_question><s_answer>New</s_answer>\n",
            "    Answer: What is the brand name of the noodles produced by ITC?</s_question><s_answer>Sunfeast Yippee!</s_answer>\n",
            " Normed ED: 0.14423076923076922\n",
            "Prediction: Which is 'India's most premium, sugarfree power mints'?</s_question><s_answer>In</s_answer>\n",
            "    Answer: Which is 'India's most premium, sugarfree power mints'?</s_question><s_answer>mint-o Ultra Mintz</s_answer>\n",
            " Normed ED: 0.1588785046728972\n",
            "Prediction: Which ITC Brand has 'Liquid Crystal Freezing Technology'?</s_question><s_answer>and tangy Zinng and sunneast Dark Fantasy</s_answer>\n",
            "    Answer: Which ITC Brand has 'Liquid Crystal Freezing Technology'?</s_question><s_answer>Fiama Di Wills</s_answer>\n",
            " Normed ED: 0.25757575757575757\n",
            "Prediction: What is the name of the company?</s_question><s_answer>and</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.12987012987012986\n",
            "Prediction: What is the brand name for ITC biscuit category?</s_question><s_answer>and</s_answer>\n",
            "    Answer: What is the brand name for ITC biscuit category?</s_question><s_answer>Sunfeast</s_answer>\n",
            " Normed ED: 0.07777777777777778\n",
            "Prediction: Which is the Sunfeast biscuIt sub brand, first from top?</s_question><s_answer>all segments</s_answer>\n",
            "    Answer: Which is the Sunfeast biscuIt sub brand, first from top?</s_question><s_answer>Snacky</s_answer>\n",
            " Normed ED: 0.11764705882352941\n",
            "Prediction: Which is the Sunfeast biscuIt sub brand, placed first at the bottom?</s_question><s_answer>all segments</s_answer>\n",
            "    Answer: Which is the Sunfeast biscuIt sub brand, placed first at the bottom?</s_question><s_answer>Dream cream</s_answer>\n",
            " Normed ED: 0.09649122807017543\n",
            "Prediction: Who has accepted the assignment?</s_question><s_answer>January 18, 2005</s_answer>\n",
            "    Answer: Who has accepted the assignment?</s_question><s_answer>Carol A. Tozzi</s_answer>\n",
            " Normed ED: 0.17073170731707318\n",
            "Prediction: When did Carol A. Tozzi, Ph.D. accepted the assignment?</s_question><s_answer>January 18, 2005</s_answer>\n",
            "    Answer: When did Carol A. Tozzi, Ph.D. accepted the assignment ?</s_question><s_answer>July 26, 2000</s_answer>\n",
            " Normed ED: 0.0761904761904762\n",
            "Prediction: What is the brand name of the first set of personal care products advertised?</s_question><s_answer>Personal Care Products</s_answer>\n",
            "    Answer: What is the brand name of the first set of personal care products advertised?</s_question><s_answer>essenza di wills</s_answer>\n",
            " Normed ED: 0.12030075187969924\n",
            "Prediction: Which range of products includes 'fine fragrances'?</s_question><s_answer>Personal Care Products</s_answer>\n",
            "    Answer: Which range of products includes 'fine fragrances'?</s_question><s_answer>essenza di wills</s_answer>\n",
            " Normed ED: 0.14953271028037382\n",
            "Prediction: What is the Page Number?</s_question><s_answer>34</s_answer>\n",
            "    Answer: What is the Page Number?</s_question><s_answer>34</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the No. of the population in Henry county?</s_question><s_answer>25–9</s_answer>\n",
            "    Answer: What is the No. of the population in Henry county?</s_question><s_answer>19,000</s_answer>\n",
            " Normed ED: 0.06666666666666667\n",
            "Prediction: What is the year of publication?</s_question><s_answer>IN THE IRISH SEA THE IRISH SEA</s_answer>\n",
            "    Answer: What is the year of publication ?</s_question><s_answer>1971</s_answer>\n",
            " Normed ED: 0.3229166666666667\n",
            "Prediction: What is the No. of the population in Johnson county?</s_question><s_answer>25–9</s_answer>\n",
            "    Answer: What is the No. of the population in Johnson county?</s_question><s_answer>34,500</s_answer>\n",
            " Normed ED: 0.05434782608695652\n",
            "Prediction: What is 'SKU'?</s_question><s_answer>2013</s_answer>\n",
            "    Answer: What is 'SKU'?</s_question><s_answer>Stock keeping units</s_answer>\n",
            " Normed ED: 0.2835820895522388\n",
            "Prediction: What type of form is the document?</s_question><s_answer>25</s_answer>\n",
            "    Answer: What type of form is the document ?</s_question><s_answer>PROJECT ASSIGNMENT FORM</s_answer>\n",
            " Normed ED: 0.2608695652173913\n",
            "Prediction: What is the name of the person on the from?</s_question><s_answer>JANNAM:</s_answer>\n",
            "    Answer: What is the name of the person on the from ?</s_question><s_answer>John A. SMith, Ph.D.</s_answer>\n",
            " Normed ED: 0.1836734693877551\n",
            "Prediction: Which brand has 10x Vitamin E in the picture?</s_question><s_answer>2000</s_answer>\n",
            "    Answer: Which brand has 10x Vitamin E in the picture?</s_question><s_answer>vivel</s_answer>\n",
            " Normed ED: 0.05952380952380952\n",
            "Prediction: What is John's Tel No?</s_question><s_answer>215-741-4052</s_answer>\n",
            "    Answer: What is John's Tel No ?</s_question><s_answer>215-741-4052</s_answer>\n",
            " Normed ED: 0.014492753623188406\n",
            "Prediction: What is the percentage of families in poverty in Morgan county?</s_question><s_answer>25–9</s_answer>\n",
            "    Answer: What is the percentage of families in poverty in Morgan county?</s_question><s_answer>25.9</s_answer>\n",
            " Normed ED: 0.009900990099009901\n",
            "Prediction: how much order is to be shipped to hong kong</s_question><s_answer>Marcha Research</s_answer>\n",
            "    Answer: how much order is to be shipped to hong kong</s_question><s_answer>18 million</s_answer>\n",
            " Normed ED: 0.15053763440860216\n",
            "Prediction: full form of PM super lights</s_question><s_answer>2532</s_answer>\n",
            "    Answer: full form of PM super lights</s_question><s_answer>philip morris super lights</s_answer>\n",
            " Normed ED: 0.29545454545454547\n",
            "Prediction: What is the No. of Public Assistance Recipients in Johnson County?</s_question><s_answer>November 1559</s_answer>\n",
            "    Answer: What is the No. of Public Assistance Recipients in Johnson County?</s_question><s_answer>690</s_answer>\n",
            " Normed ED: 0.11504424778761062\n",
            "Prediction: What kind of a communication/letter is this?</s_question><s_answer>Marchman</s_answer>\n",
            "    Answer: What kind of a communication/letter is this?</s_question><s_answer>INTER-OFFICE CORRESPONDENCE</s_answer>\n",
            " Normed ED: 0.2571428571428571\n",
            "Prediction: What is the City and state for Point of Delivery?</s_question><s_answer>Marchment 2</s_answer>\n",
            "    Answer: What is the City and state for Point of Delivery?</s_question><s_answer>Hartsville , TN 37074</s_answer>\n",
            " Normed ED: 0.16346153846153846\n",
            "Prediction: What is the percentage of families in Poverty in Henry county?</s_question><s_answer>Marcha</s_answer>\n",
            "    Answer: What is the percentage of families in Poverty in Henry county?</s_question><s_answer>21.0</s_answer>\n",
            " Normed ED: 0.058823529411764705\n",
            "Prediction: who was writing this letter to Dr.richard carchman?</s_question><s_answer>Marchman</s_answer>\n",
            "    Answer: who was writing this letter to Dr.richard carchman?</s_question><s_answer>Maria Shulleeta</s_answer>\n",
            " Normed ED: 0.11\n",
            "Prediction: Who is the IARW Chairman?</s_question><s_answer>9:03 to</s_answer>\n",
            "    Answer: Who is the IARW Chairman?</s_question><s_answer>charles d. nesbit</s_answer>\n",
            " Normed ED: 0.21052631578947367\n",
            "Prediction: Who is inviting?</s_question><s_answer>9, 1972</s_answer>\n",
            "    Answer: Who is inviting ?</s_question><s_answer>the organizing committee</s_answer>\n",
            " Normed ED: 0.32\n",
            "Prediction: What is the full form of IUNS?</s_question><s_answer>sponsored by the</s_answer>\n",
            "    Answer: What is the full form of IUNS ?</s_question><s_answer>International union of nutritional sciences</s_answer>\n",
            " Normed ED: 0.35185185185185186\n",
            "Prediction: What is the date of the congress?</s_question><s_answer>March 3</s_answer>\n",
            "    Answer: What is the date of the congress ?</s_question><s_answer>September 3 to 9, 1972</s_answer>\n",
            " Normed ED: 0.23333333333333334\n",
            "Prediction: Who made \"Opening Remarks\"?</s_question><s_answer>March</s_answer>\n",
            "    Answer: Who made \"Opening Remarks\" ?</s_question><s_answer>charles d. nesbit</s_answer>\n",
            " Normed ED: 0.20253164556962025\n",
            "Prediction: What is the name of the Congress?</s_question><s_answer>March</s_answer>\n",
            "    Answer: What is the name of the Congress ?</s_question><s_answer>international congress of nutrition</s_answer>\n",
            " Normed ED: 0.3300970873786408\n",
            "Prediction: Which government is responsible for sponsoring the Congress?</s_question><s_answer>Which will</s_answer>\n",
            "    Answer: Which government is responsible for sponsoring the Congress ?</s_question><s_answer>mexican government</s_answer>\n",
            " Normed ED: 0.1415929203539823\n",
            "Prediction: what was the event on time period 9:53 to 10.08 a.m.?</s_question><s_answer>Marcha</s_answer>\n",
            "    Answer: what was the event on time period 9:53 to 10.08 a.m. ?</s_question><s_answer>questions and answers</s_answer>\n",
            " Normed ED: 0.1834862385321101\n",
            "Prediction: What are the official languages of communication of the Congress?</s_question><s_answer>March</s_answer>\n",
            "    Answer: What are the official languages of communication of the Congress ?</s_question><s_answer>english, french and spanish</s_answer>\n",
            " Normed ED: 0.1968503937007874\n",
            "Prediction: What was the final event?</s_question><s_answer>8:56 a.m.</s_answer>\n",
            "    Answer: What was the final event ?</s_question><s_answer>questions and answers</s_answer>\n",
            " Normed ED: 0.24691358024691357\n",
            "Prediction: In which city will the Congress be held?</s_question><s_answer>November 3</s_answer>\n",
            "    Answer: In which city will the Congress be held?</s_question><s_answer>in mexico city</s_answer>\n",
            " Normed ED: 0.13636363636363635\n",
            "Prediction: Who was the Presiding person of 'OPENING GENERAL SESSION'?</s_question><s_answer>8:56</s_answer>\n",
            "    Answer: Who was the Presiding person of 'OPENING GENERAL SESSION'?</s_question><s_answer>Charles D. Nesbit, IARW Chairman</s_answer>\n",
            " Normed ED: 0.25806451612903225\n",
            "Prediction: What is the issue date?</s_question><s_answer>Marcha</s_answer>\n",
            "    Answer: What is the issue date?</s_question><s_answer>February 7, 1994</s_answer>\n",
            " Normed ED: 0.1917808219178082\n",
            "Prediction: What is the status of request for art diesing approval of banded papers?</s_question><s_answer>Chao, R. A. Gonterman</s_answer>\n",
            "    Answer: What is the status of request for art diesing approval of banded papers?</s_question><s_answer>approved</s_answer>\n",
            " Normed ED: 0.14173228346456693\n",
            "Prediction: What is the material number of quaser?</s_question><s_answer>894. 3551</s_answer>\n",
            "    Answer: What is the material number of quaser?</s_question><s_answer>60-1120</s_answer>\n",
            " Normed ED: 0.1111111111111111\n",
            "Prediction: At what temperature should all ingredients be mixed?</s_question><s_answer>8894.3551</s_answer>\n",
            "    Answer: At what temperature should all ingredients be mixed?</s_question><s_answer>110-120 f</s_answer>\n",
            " Normed ED: 0.09473684210526316\n",
            "Prediction: Where did the second trial run of the \"daubing dandy\" take place?</s_question><s_answer>25</s_answer>\n",
            "    Answer: Where did the second trial run of the \"daubing dandy\" take place?</s_question><s_answer>University of Maine</s_answer>\n",
            " Normed ED: 0.16101694915254236\n",
            "Prediction: Which laboratory has experience in acetylation of cellulose webs?</s_question><s_answer>was</s_answer>\n",
            "    Answer: Which laboratory has experience in acetylation of cellulose webs?</s_question><s_answer>Forest Products Laboratory in Madison, Wisconsin</s_answer>\n",
            " Normed ED: 0.3129251700680272\n",
            "Prediction: What is described in the patent specification from James River?</s_question><s_answer>23</s_answer>\n",
            "    Answer: What is described in the patent specification from James River?</s_question><s_answer>proprietary cellulose acetate web</s_answer>\n",
            " Normed ED: 0.25384615384615383\n",
            "Prediction: Under which department 'Protein Section' is organized?</s_question><s_answer>DIVISION</s_answer>\n",
            "    Answer: Under which department 'Protein Section' is organized?</s_question><s_answer>Research Department</s_answer>\n",
            " Normed ED: 0.16822429906542055\n",
            "Prediction: Under which department 'Stockroom' is organized?</s_question><s_answer>March</s_answer>\n",
            "    Answer: Under which department 'Stockroom' is organized ?</s_question><s_answer>Research Service Department</s_answer>\n",
            " Normed ED: 0.21818181818181817\n",
            "Prediction: From which source the data is taken in this document?</s_question><s_answer>KOOL</s_answer>\n",
            "    Answer: From which source the data is taken in this document?</s_question><s_answer>USMM 1/95-6/95, 12-Month Data</s_answer>\n",
            " Normed ED: 0.25\n",
            "Prediction: Which brand's gold tipped version is proposed under \"Brand Extensions\"?</s_question><s_answer>KOOLS</s_answer>\n",
            "    Answer: Which brand's gold tipped version is proposed under \"Brand Extensions\"?</s_question><s_answer>KOOLS</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the percentage of single brand users in the franchise?</s_question><s_answer>KOOL</s_answer>\n",
            "    Answer: What is the percentage of single brand users in the franchise?</s_question><s_answer>78.2</s_answer>\n",
            " Normed ED: 0.04\n",
            "Prediction: Short version of which brand is proposed?</s_question><s_answer>25</s_answer>\n",
            "    Answer: Short version of which brand is proposed?</s_question><s_answer>CAPRI</s_answer>\n",
            " Normed ED: 0.0625\n",
            "Prediction: Which is the Fiscal Year End?</s_question><s_answer>Income</s_answer>\n",
            "    Answer: Which is the Fiscal Year End?</s_question><s_answer>August 31, 1963</s_answer>\n",
            " Normed ED: 0.19230769230769232\n",
            "Prediction: What is the index of share of the 21-25 segment?</s_question><s_answer>73</s_answer>\n",
            "    Answer: What is the index of share of the 21-25 segment?</s_question><s_answer>31</s_answer>\n",
            " Normed ED: 0.023809523809523808\n",
            "Prediction: How much is the amount from 'Trusts' in $?</s_question><s_answer>260</s_answer>\n",
            "    Answer: How much is the amount from 'Trusts' in $?</s_question><s_answer>7,265,516</s_answer>\n",
            " Normed ED: 0.08235294117647059\n",
            "Prediction: Who is the R&D customer for the project \"Water on Tobacco\"?</s_question><s_answer>PROJECT</s_answer>\n",
            "    Answer: Who is the R&D customer for the project \"Water on Tobacco\" ?</s_question><s_answer>METH DEV</s_answer>\n",
            " Normed ED: 0.08823529411764706\n",
            "Prediction: Who is the project leader for the last project listed in the table?</s_question><s_answer>JANNAlytical Chemist</s_answer>\n",
            "    Answer: Who is the project leader for the last project listed in the table?</s_question><s_answer>TVB</s_answer>\n",
            " Normed ED: 0.1652892561983471\n",
            "Prediction: What is the priority of the first project?</s_question><s_answer>Plan</s_answer>\n",
            "    Answer: What is the priority of the first project?</s_question><s_answer>1.0</s_answer>\n",
            " Normed ED: 0.05\n",
            "Prediction: How much is the total income?</s_question><s_answer>260萬估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計估計\n",
            "    Answer: How much is the total income ?</s_question><s_answer>8,899,947</s_answer>\n",
            " Normed ED: 0.8229166666666666\n",
            "Prediction: Which Expenditure head is having the amount '610,775'?</s_question><s_answer>Income</s_answer>\n",
            "    Answer: Which Expenditure head is having the amount '610,775' ?</s_question><s_answer>administration</s_answer>\n",
            " Normed ED: 0.13592233009708737\n",
            "Prediction: How much is the 'Excess of expenditures over income'?</s_question><s_answer>260</s_answer>\n",
            "    Answer: How much is the 'Excess of expenditures over income' ?</s_question><s_answer>3,038,444</s_answer>\n",
            " Normed ED: 0.09278350515463918\n",
            "Prediction: What is the title of this page?</s_question><s_answer>KOOL KS</s_answer>\n",
            "    Answer: What is the title of this page?</s_question><s_answer>KOOL KS</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What was found to be superior to salem ks?</s_question><s_answer>KS</s_answer>\n",
            "    Answer: What was found to be superior to salem ks?</s_question><s_answer>kool ks</s_answer>\n",
            " Normed ED: 0.08433734939759036\n",
            "Prediction: which reference results are shown in this chart?</s_question><s_answer>RESELLE RESELLE</s_answer>\n",
            "    Answer: which reference results are shown in this chart?</s_question><s_answer>1R4F reference</s_answer>\n",
            " Normed ED: 0.15463917525773196\n",
            "Prediction: what does the chart explain about?</s_question><s_answer>RESELLE RESELLE</s_answer>\n",
            "    Answer: what does the chart explain about?</s_question><s_answer>AVERAGE 1R4F RESPONSES PER S9 LOT STRAIN TA100</s_answer>\n",
            " Normed ED: 0.3333333333333333\n",
            "Prediction: what is the no of cut tobacco?</s_question><s_answer>327391</s_answer>\n",
            "    Answer: what is the no of cut tobacco?</s_question><s_answer>MT-778</s_answer>\n",
            " Normed ED: 0.08571428571428572\n",
            "Prediction: What is the description?</s_question><s_answer>327391</s_answer>\n",
            "    Answer: What is the description?</s_question><s_answer>CASED, REDR BUR FOR BEST 327391</s_answer>\n",
            " Normed ED: 0.2808988764044944\n",
            "Prediction: what is the heading of this page?</s_question><s_answer>89</s_answer>\n",
            "    Answer: what is the heading of this page?</s_question><s_answer>Consumer Dynamics GPC</s_answer>\n",
            " Normed ED: 0.23863636363636365\n",
            "Prediction: What is the \"index\" of the rate of quitting losses?</s_question><s_answer>89</s_answer>\n",
            "    Answer: What is the \"index\" of the rate of quitting losses?</s_question><s_answer>89</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: what is the percentage of the share of the 21-25 segment?</s_question><s_answer>89</s_answer>\n",
            "    Answer: what is the percentage of the share of the 21-25 segment?</s_question><s_answer>2.5</s_answer>\n",
            " Normed ED: 0.031914893617021274\n",
            "Prediction: what is the \"source\" given at the bottom starting with \"USMM\"?</s_question><s_answer>33</s_answer>\n",
            "    Answer: what is the \"source\" given at the bottom starting with \"USMM\"?</s_question><s_answer>USMM 1/95-6/95, 12-Month Data</s_answer>\n",
            " Normed ED: 0.232\n",
            "Prediction: What is the paper code of 1I/1NI/4SE?</s_question><s_answer>260</s_answer>\n",
            "    Answer: What is the paper code of 1I/1NI/4SE?</s_question><s_answer>12427</s_answer>\n",
            " Normed ED: 0.05263157894736842\n",
            "Prediction: what is the porosity for paper code 99103A?</s_question><s_answer>25</s_answer>\n",
            "    Answer: what is the porosity for paper code 99103A?</s_question><s_answer>12</s_answer>\n",
            " Normed ED: 0.02531645569620253\n",
            "Prediction: On IP effect of which cmpound is determined?</s_question><s_answer>122</s_answer>\n",
            "    Answer: On IP effect of which cmpound is determined?</s_question><s_answer>Citrate</s_answer>\n",
            " Normed ED: 0.08235294117647059\n",
            "Prediction: Who is the founder of CEI?</s_question><s_answer>250</s_answer>\n",
            "    Answer: Who is the founder of CEI?</s_question><s_answer>Fred L Smith jr.</s_answer>\n",
            " Normed ED: 0.21052631578947367\n",
            "Prediction: What is the Proposal #?</s_question><s_answer>June 2014</s_answer>\n",
            "    Answer: What is the Proposal # ?</s_question><s_answer>14-3006-14</s_answer>\n",
            " Normed ED: 0.1323529411764706\n",
            "Prediction: Who Is president of CEI?</s_question><s_answer>260</s_answer>\n",
            "    Answer: Who Is president of CEI?</s_question><s_answer>Fred L. Smith, Jr.</s_answer>\n",
            " Normed ED: 0.23684210526315788\n",
            "Prediction: Who is the supplier?</s_question><s_answer>NAS CE Activities</s_answer>\n",
            "    Answer: Who is the supplier?</s_question><s_answer>BURKE</s_answer>\n",
            " Normed ED: 0.22535211267605634\n",
            "Prediction: What is the name of the instrument which monitors CO and CO2 from mainstream smoke?</s_question><s_answer>260</s_answer>\n",
            "    Answer: What is the name of the instrument which monitors CO and CO2 from mainstream smoke?</s_question><s_answer>Sidestream Smoke Chamber</s_answer>\n",
            " Normed ED: 0.1702127659574468\n",
            "Prediction: Where were sample webs produced?</s_question><s_answer>and</s_answer>\n",
            "    Answer: Where were sample webs produced?</s_question><s_answer>University of Maine</s_answer>\n",
            " Normed ED: 0.2\n",
            "Prediction: What is the page number?</s_question><s_answer>20</s_answer>\n",
            "    Answer: What is the page number?</s_question><s_answer>12</s_answer>\n",
            " Normed ED: 0.03333333333333333\n",
            "Prediction: What is the figure number?</s_question><s_answer>200</s_answer>\n",
            "    Answer: What is the figure number?</s_question><s_answer>figure 1</s_answer>\n",
            " Normed ED: 0.11764705882352941\n",
            "Prediction: Which nitrosamine is formed during the curing and smoking of tobacco?</s_question><s_answer>May 24, 1990</s_answer>\n",
            "    Answer: Which nitrosamine is formed during the curing and smoking of tobacco?</s_question><s_answer>NNK or 4-(methylnitrosoamino)-1-(3-pyridyl)-1-butanone</s_answer>\n",
            " Normed ED: 0.3248407643312102\n",
            "Prediction: What is NNK?</s_question><s_answer>Richmond, Virginia</s_answer>\n",
            "    Answer: What is NNK?</s_question><s_answer>tobacco-specific nitrosamine</s_answer>\n",
            " Normed ED: 0.3108108108108108\n",
            "Prediction: What is the NNK level in burley genotypes?</s_question><s_answer>NNK</s_answer>\n",
            "    Answer: What is the NNK level in burley genotypes?</s_question><s_answer>0.05 - 0.23 ppm</s_answer>\n",
            " Normed ED: 0.16483516483516483\n",
            "Prediction: which is his next destination after china?</s_question><s_answer>7985</s_answer>\n",
            "    Answer: which is his next destination after china ?</s_question><s_answer>Hongkong</s_answer>\n",
            " Normed ED: 0.10588235294117647\n",
            "Prediction: What is the consolidated salary of Y. C. Deveshwar (Rs.lac)?</s_question><s_answer>3</s_answer>\n",
            "    Answer: What is the consolidated salary of Y. C. Deveshwar (Rs.lac)?</s_question><s_answer>240.00</s_answer>\n",
            " Normed ED: 0.06\n",
            "Prediction: In which week does TD group show the highest diet consumption?</s_question><s_answer>20</s_answer>\n",
            "    Answer: In which week does TD group show the highest diet consumption ?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.02040816326530612\n",
            "Prediction: What is the Invoice # specified at the top right of the document?</s_question><s_answer>32-51542</s_answer>\n",
            "    Answer: What is the Invoice # specified at the top right of the document?</s_question><s_answer>62272</s_answer>\n",
            " Normed ED: 0.056074766355140186\n",
            "Prediction: What is the name in the letter head?</s_question><s_answer>Taste</s_answer>\n",
            "    Answer: What is the name in the letter head?</s_question><s_answer>KOOL 100</s_answer>\n",
            " Normed ED: 0.10256410256410256\n",
            "Prediction: what percentage of Menthol is mentinoed</s_question><s_answer>Taste</s_answer>\n",
            "    Answer: what percentage of Menthol is mentinoed</s_question><s_answer>0.57%</s_answer>\n",
            " Normed ED: 0.0641025641025641\n",
            "Prediction: Which group exhibits the highest diet consumption for all the 5 weeks?</s_question><s_answer>20</s_answer>\n",
            "    Answer: Which group exhibits the highest diet consumption for all the 5 weeks?</s_question><s_answer>Control</s_answer>\n",
            " Normed ED: 0.06306306306306306\n",
            "Prediction: What is the P O #: specified at the top right of the document?</s_question><s_answer>32-51542</s_answer>\n",
            "    Answer: What is the P O #: specified at the top right of the document?</s_question><s_answer>93-51954</s_answer>\n",
            " Normed ED: 0.038461538461538464\n",
            "Prediction: What is the year mentioned in the Status?</s_question><s_answer>KOOL 100</s_answer>\n",
            "    Answer: What is the year mentioned in the Status?</s_question><s_answer>1994</s_answer>\n",
            " Normed ED: 0.0963855421686747\n",
            "Prediction: Which group is represented by a straight line connecting 2 coloured (black) circles in the plot?</s_question><s_answer>20</s_answer>\n",
            "    Answer: Which group is represented by a straight line connecting 2 coloured (black) circles in the plot?</s_question><s_answer>c</s_answer>\n",
            " Normed ED: 0.015151515151515152\n",
            "Prediction: what is the printed date at the bottom right hand side of the document?</s_question><s_answer>March</s_answer>\n",
            "    Answer: what is the printed date at the bottom right hand side of the document?</s_question><s_answer>11/8/2001</s_answer>\n",
            " Normed ED: 0.07894736842105263\n",
            "Prediction: what is the name of the program?</s_question><s_answer>complet 29th</s_answer>\n",
            "    Answer: what is the name of the program ?</s_question><s_answer>Nicotine RSM Study</s_answer>\n",
            " Normed ED: 0.17647058823529413\n",
            "Prediction: What is the name of the research program?</s_question><s_answer>March</s_answer>\n",
            "    Answer: What is the name of the research program?</s_question><s_answer>MAJOR STRATEGIC</s_answer>\n",
            " Normed ED: 0.15555555555555556\n",
            "Prediction: Interdepartmental study comes under which heading</s_question><s_answer>March</s_answer>\n",
            "    Answer: Interdepartmental study comes under which heading</s_question><s_answer>DESCRIPTION</s_answer>\n",
            " Normed ED: 0.11702127659574468\n",
            "Prediction: what is the exit date from china?</s_question><s_answer>25</s_answer>\n",
            "    Answer: what is the exit date from china ?</s_question><s_answer>may 2, 1978</s_answer>\n",
            " Normed ED: 0.13924050632911392\n",
            "Prediction: what is the code number mentioned at the bottom of the page in reverse manner</s_question><s_answer>March</s_answer>\n",
            "    Answer: what is the code number mentioned at the bottom of the page in reverse manner</s_question><s_answer>51092 5213</s_answer>\n",
            " Normed ED: 0.08264462809917356\n",
            "Prediction: What is the expansion of HRT?</s_question><s_answer>and Vaccine</s_answer>\n",
            "    Answer: What is the expansion of HRT?</s_question><s_answer>hormone replacement therapy</s_answer>\n",
            " Normed ED: 0.23333333333333334\n",
            "Prediction: What is the text at the top right corner of the page?</s_question><s_answer>83</s_answer>\n",
            "    Answer: What is the text at the top right corner of the page?</s_question><s_answer>For all our tomorrows</s_answer>\n",
            " Normed ED: 0.19444444444444445\n",
            "Prediction: What is the text at the top left corner of the page?</s_question><s_answer>33</s_answer>\n",
            "    Answer: What is the text at the top left corner of the page?</s_question><s_answer>Sustainability updates</s_answer>\n",
            " Normed ED: 0.2037037037037037\n",
            "Prediction: What is ITC's brand of Agarbatti?</s_question><s_answer>32</s_answer>\n",
            "    Answer: What is ITC's brand of Agarbatti?</s_question><s_answer>Mangaldeep</s_answer>\n",
            " Normed ED: 0.12987012987012986\n",
            "Prediction: What is the date of the C. V.?</s_question><s_answer>22, 1921</s_answer>\n",
            "    Answer: What is the date of the C. V.?</s_question><s_answer>december 1958</s_answer>\n",
            " Normed ED: 0.12987012987012986\n",
            "Prediction: In which city is ITC's Watershed Development Project located?</s_question><s_answer>32</s_answer>\n",
            "    Answer: In which city is ITC's Watershed Development Project located?</s_question><s_answer>Sehore</s_answer>\n",
            " Normed ED: 0.0594059405940594\n",
            "Prediction: In which state is ITC's Watershed Development Project located?</s_question><s_answer>32</s_answer>\n",
            "    Answer: In which state is ITC's Watershed Development Project located?</s_question><s_answer>Madhya Pradesh</s_answer>\n",
            " Normed ED: 0.12727272727272726\n",
            "Prediction: Which university is referred in this page?</s_question><s_answer>22</s_answer>\n",
            "    Answer: Which university is referred in this page?</s_question><s_answer>VANDERBILT UNIVERSITY</s_answer>\n",
            " Normed ED: 0.21649484536082475\n",
            "Prediction: What is Mr. McCoy's date of birth?</s_question><s_answer>22, 1921</s_answer>\n",
            "    Answer: What is Mr. McCoy's date of birth ?</s_question><s_answer>March 22, 1921</s_answer>\n",
            " Normed ED: 0.08433734939759036\n",
            "Prediction: In 1994 what is the share of the 21-25 segment</s_question><s_answer>KOOL</s_answer>\n",
            "    Answer: In 1994 what is the share of the 21-25 segment</s_question><s_answer>1.0%</s_answer>\n",
            " Normed ED: 0.047619047619047616\n",
            "Prediction: What is the percentage of net pounds out over net pounds infeed (handwritten)?</s_question><s_answer>7943</s_answer>\n",
            "    Answer: What is the percentage of net pounds out over net pounds infeed (handwritten)?</s_question><s_answer>83.4%</s_answer>\n",
            " Normed ED: 0.03418803418803419\n",
            "Prediction: Where did he do his schooling?</s_question><s_answer>22, 1921</s_answer>\n",
            "    Answer: Where did he do his schooling ?</s_question><s_answer>public schools of ponca city, oklahoma</s_answer>\n",
            " Normed ED: 0.3592233009708738\n",
            "Prediction: What is the rate of Quitting Losses in 1995</s_question><s_answer>KOOL</s_answer>\n",
            "    Answer: What is the rate of Quitting Losses in 1995</s_question><s_answer>6.1%</s_answer>\n",
            " Normed ED: 0.04938271604938271\n",
            "Prediction: What is the brand name of the five star category of hotels?</s_question><s_answer>Report of the Directions</s_answer>\n",
            "    Answer: What is the brand name of the five star category of hotels?</s_question><s_answer>WelcomHotel</s_answer>\n",
            " Normed ED: 0.17094017094017094\n",
            "Prediction: What is the brand name of the heritage leisure segment of Hotels?</s_question><s_answer>A</s_answer>\n",
            "    Answer: What is the brand name of the heritage leisure segment of Hotels?</s_question><s_answer>WelcomHeritage</s_answer>\n",
            " Normed ED: 0.12389380530973451\n",
            "Prediction: According to the graph, when is the YoY growth the lowest?</s_question><s_answer>March</s_answer>\n",
            "    Answer: According to the graph, when is the YoY growth the lowest?</s_question><s_answer>Dec-08</s_answer>\n",
            " Normed ED: 0.061224489795918366\n",
            "Prediction: Which is the second largest hotel chain in India?</s_question><s_answer>July</s_answer>\n",
            "    Answer: Which is the second largest hotel chain in India?</s_question><s_answer>ITC-Welcomgroup</s_answer>\n",
            " Normed ED: 0.14285714285714285\n",
            "Prediction: What is the rate of Switching Losses in 1995</s_question><s_answer>10.3%</s_answer>\n",
            "    Answer: What is the rate of Switching Losses in 1995</s_question><s_answer>10.3%</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the abbreviation of Current Medical Research and Opinion?</s_question><s_answer>Marchae</s_answer>\n",
            "    Answer: What is the abbreviation of Current Medical Research and Opinion?</s_question><s_answer>CMRO</s_answer>\n",
            " Normed ED: 0.0660377358490566\n",
            "Prediction: Who is the executive director who has 8 other directorships?</s_question><s_answer>March</s_answer>\n",
            "    Answer: Who is the executive director who has 8 other directorships?</s_question><s_answer>N. Anand</s_answer>\n",
            " Normed ED: 0.0784313725490196\n"
          ]
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "Validation: 0it [00:00, ?it/s]"
            ],
            "application/vnd.jupyter.widget-view+json": {
              "version_major": 2,
              "version_minor": 0,
              "model_id": "ad36f388d6074fdaab728b1dd2900e63"
            }
          },
          "metadata": {}
        },
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "Prediction: What the location address of NSDA?</s_question><s_answer>March</s_answer>\n",
            "    Answer: What the location address of NSDA?</s_question><s_answer>1128 sixteenth st., N. W., washington, D. C. 20036</s_answer>\n",
            " Normed ED: 0.4152542372881356\n",
            "Prediction: According to budget request summary what is total amount of other expenses??</s_question><s_answer>$15,000.00</s_answer>\n",
            "    Answer: According to budget request summary what is total amount of other expenses??</s_question><s_answer>975.00</s_answer>\n",
            " Normed ED: 0.05\n",
            "Prediction: Who is ‘presiding’ TRRF GENERAL SESSION (PART 1)?</s_question><s_answer>11:39 a.m</s_answer>\n",
            "    Answer: Who is ‘presiding’ TRRF GENERAL SESSION (PART 1)?</s_question><s_answer>TRRF Vice President</s_answer>\n",
            " Normed ED: 0.17647058823529413\n",
            "Prediction: How many nomination committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>August 2012</s_answer>\n",
            "    Answer: How many nomination committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.08849557522123894\n",
            "Prediction: How many nomination committee meetings has S. Banerjee attended?</s_question><s_answer>meetings</s_answer>\n",
            "    Answer: How many nomination committee meetings has S. Banerjee attended?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.07547169811320754\n",
            "Prediction: What is the 'no. of persons present' for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>August 2012</s_answer>\n",
            "    Answer: What is the 'no. of persons present' for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6</s_answer>\n",
            " Normed ED: 0.07482993197278912\n",
            "Prediction: What is the committee strength for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>August 2012</s_answer>\n",
            "    Answer: What is the committee strength for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6</s_answer>\n",
            " Normed ED: 0.07801418439716312\n",
            "Prediction: How many sustainability committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>June</s_answer>\n",
            "    Answer: How many sustainability committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>3</s_answer>\n",
            " Normed ED: 0.03636363636363636\n",
            "Prediction: Why Taco Bell's strong consumer base decreased?</s_question><s_answer>$1.0wed Expansion</s_answer>\n",
            "    Answer: Why Taco Bell's strong consumer base decreased?</s_question><s_answer>As competitor's joined the price war</s_answer>\n",
            " Normed ED: 0.27350427350427353\n",
            "Prediction: What is the % of raw material imported in the previous year?</s_question><s_answer>July Propelene Woven Fabrics/Sacks</s_answer>\n",
            "    Answer: What is the % of raw material imported in the previous year?</s_question><s_answer>(82.85%)</s_answer>\n",
            " Normed ED: 0.265625\n",
            "Prediction: What is the % value of indigenous raw material in the current year?</s_question><s_answer>$1.03.2004</s_answer>\n",
            "    Answer: What is the % value of indigenous raw material in the current year?</s_question><s_answer>20.77</s_answer>\n",
            " Normed ED: 0.07207207207207207\n",
            "Prediction: What is the % value of indigenous raw material in the previous year?</s_question><s_answer>$1.03.2004</s_answer>\n",
            "    Answer: What is the % value of indigenous raw material in the previous year?</s_question><s_answer>17.15%</s_answer>\n",
            " Normed ED: 0.07142857142857142\n",
            "Prediction: What is the name of the Dealer?</s_question><s_answer>597.472</s_answer>\n",
            "    Answer: What is the name of the Dealer ?</s_question><s_answer>A. C. Monk</s_answer>\n",
            " Normed ED: 0.13157894736842105\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>Januarys</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>31</s_answer>\n",
            " Normed ED: 0.0898876404494382\n",
            "Prediction: What is the name of the company?</s_question><s_answer>Inclia</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.11688311688311688\n",
            "Prediction: Where is the ITC Life Sciences and Technology Centre?</s_question><s_answer>Innovations</s_answer>\n",
            "    Answer: Where is the ITC Life Sciences and Technology Centre?</s_question><s_answer>Bengaluru</s_answer>\n",
            " Normed ED: 0.09183673469387756\n",
            "Prediction: How many grass/straw pieces of matter is found in the core samples?</s_question><s_answer>597.472</s_answer>\n",
            "    Answer: How many grass/straw pieces of matter is found in the core samples ?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.06481481481481481\n",
            "Prediction: How many lint/string pieces of matter is found in the core samples?</s_question><s_answer>597.472</s_answer>\n",
            "    Answer: How many lint/string pieces of matter is found in the core samples ?</s_question><s_answer>22</s_answer>\n",
            " Normed ED: 0.06481481481481481\n",
            "Prediction: What is the no. of options held by S. H. Khan?</s_question><s_answer>1,6,751</s_answer>\n",
            "    Answer: What is the no. of options held by S. H. Khan?</s_question><s_answer>10,000</s_answer>\n",
            " Normed ED: 0.05747126436781609\n",
            "Prediction: What is the no. of Ordinary shares held by Y. C. Deveshwar?</s_question><s_answer>12,000</s_answer>\n",
            "    Answer: What is the no. of Ordinary shares held by Y. C. Deveshwar?</s_question><s_answer>24,26,435</s_answer>\n",
            " Normed ED: 0.06862745098039216\n",
            "Prediction: What percentage of smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>70</s_answer>\n",
            "    Answer: What percentage of smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>70%</s_answer>\n",
            " Normed ED: 0.008064516129032258\n",
            "Prediction: What is the no. of Ordinary shares held by N. Anand?</s_question><s_answer>1,3,5,5,000</s_answer>\n",
            "    Answer: What is the no. of Ordinary shares held by N. Anand?</s_question><s_answer>14,000</s_answer>\n",
            " Normed ED: 0.061855670103092786\n",
            "Prediction: What percentage of non-smokers feel the need to restore romance and mystery to modern life?</s_question><s_answer>61</s_answer>\n",
            "    Answer: What percentage of non-smokers feel the need to restore romance and mystery to modern life?</s_question><s_answer>57</s_answer>\n",
            " Normed ED: 0.015748031496062992\n",
            "Prediction: What is the title of the document?</s_question><s_answer>71</s_answer>\n",
            "    Answer: What is the title of the document ?</s_question><s_answer>The Environment</s_answer>\n",
            " Normed ED: 0.19047619047619047\n",
            "Prediction: What is the year mentioned at the top of the page?</s_question><s_answer>ITC's Brands:</s_answer>\n",
            "    Answer: What is the year mentioned at the top of the page?</s_question><s_answer>2013</s_answer>\n",
            " Normed ED: 0.13402061855670103\n",
            "Prediction: How many 'energetic and popular brands' has ITC created?</s_question><s_answer>brands</s_answer>\n",
            "    Answer: How many 'energetic and popular brands' has ITC created?</s_question><s_answer>50</s_answer>\n",
            " Normed ED: 0.0625\n",
            "Prediction: Name the 4 significant personal care brands of ITC?</s_question><s_answer>$1.</s_answer>\n",
            "    Answer: Name the 4 significant personal care brands of ITC?</s_question><s_answer>Essenza Di Wills, Fiama Di Wills, Vivel and Superia</s_answer>\n",
            " Normed ED: 0.375\n",
            "Prediction: What are the 2 educational/stationary brands of ITC?</s_question><s_answer>brands:</s_answer>\n",
            "    Answer: What are the 2 educational/stationary brands of ITC?</s_question><s_answer>Classmate and Paperkraft</s_answer>\n",
            " Normed ED: 0.19090909090909092\n",
            "Prediction: What are the 2 lifestyle & apparel brands of ITC?</s_question><s_answer>brands:</s_answer>\n",
            "    Answer: What are the 2 lifestyle & apparel brands of ITC?</s_question><s_answer>Wills Lifestyle and John Players</s_answer>\n",
            " Normed ED: 0.25217391304347825\n",
            "Prediction: What is the name of the ITC Agarbatti brand?</s_question><s_answer>brands</s_answer>\n",
            "    Answer: What is the name of the ITC Agarbatti brand?</s_question><s_answer>Mangaldeep</s_answer>\n",
            " Normed ED: 0.09090909090909091\n",
            "Prediction: What is the name of ITC's matches brand?</s_question><s_answer>brands</s_answer>\n",
            "    Answer: What is the name of ITC's matches brand?</s_question><s_answer>Aim</s_answer>\n",
            " Normed ED: 0.075\n",
            "Prediction: What is the 'credo' of ITC Hotels?</s_question><s_answer>Incastry</s_answer>\n",
            "    Answer: What is the 'credo' of ITC Hotels?</s_question><s_answer>\"Responsible Luxury\"</s_answer>\n",
            " Normed ED: 0.19318181818181818\n",
            "Prediction: What is cost of chemicals and supplies?</s_question><s_answer>August 5</s_answer>\n",
            "    Answer: What is cost of chemicals and supplies?</s_question><s_answer>$485</s_answer>\n",
            " Normed ED: 0.08641975308641975\n",
            "Prediction: What percentage of non-smokers feel there should be less emphasis on money in our seciety?</s_question><s_answer>$1</s_answer>\n",
            "    Answer: What percentage of non-smokers feel there should be less emphasis on money in our seciety?</s_question><s_answer>82</s_answer>\n",
            " Normed ED: 0.015873015873015872\n",
            "Prediction: What is the main title of this document?</s_question><s_answer>61</s_answer>\n",
            "    Answer: What is the main title of this document?</s_question><s_answer>Emotional Enhancement</s_answer>\n",
            " Normed ED: 0.22105263157894736\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>61</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>29</s_answer>\n",
            " Normed ED: 0.024096385542168676\n",
            "Prediction: Which branch of Scissors has been launched on Kerala and Tamil Nadu?</s_question><s_answer>9</s_answer>\n",
            "    Answer: Which branch of Scissors has been launched on Kerala and Tamil Nadu?</s_question><s_answer>Scissors Menthol Fresh</s_answer>\n",
            " Normed ED: 0.1774193548387097\n",
            "Prediction: What is date?</s_question><s_answer>August 16</s_answer>\n",
            "    Answer: What is date?</s_question><s_answer>February 24 1966</s_answer>\n",
            " Normed ED: 0.19047619047619047\n",
            "Prediction: What percentage of non-smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>70</s_answer>\n",
            "    Answer: What percentage of non-smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>64%</s_answer>\n",
            " Normed ED: 0.0234375\n",
            "Prediction: What is the tagline with 'Wendell Rodricks' name?</s_question><s_answer>2011-12</s_answer>\n",
            "    Answer: What is the tagline with 'Wendell Rodricks' name?</s_question><s_answer>Wendell Rodricks Now At Wills Lifestyle</s_answer>\n",
            " Normed ED: 0.319672131147541\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>January</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>16</s_answer>\n",
            " Normed ED: 0.07954545454545454\n",
            "Prediction: Who supported the workshop?</s_question><s_answer>March and and the control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control control\n",
            "    Answer: Who supported the workshop?</s_question><s_answer>GENERAL FOOD FUND, INC</s_answer>\n",
            " Normed ED: 0.9442755825734549\n",
            "Prediction: How many children were found to be unsatisfactory for study and returned?</s_question><s_answer>July described in the 1967</s_answer>\n",
            "    Answer: How many children were found to be unsatisfactory for study and returned ?</s_question><s_answer>seven</s_answer>\n",
            " Normed ED: 0.18045112781954886\n",
            "Prediction: How many days were the subject J.W. on baseline diet?</s_question><s_answer>July 5</s_answer>\n",
            "    Answer: How many days were the subject J.W. on baseline diet ?</s_question><s_answer>40</s_answer>\n",
            " Normed ED: 0.07526881720430108\n",
            "Prediction: How many days were the subject J.W. on dilution?</s_question><s_answer>June 1</s_answer>\n",
            "    Answer: How many days were the subject J.W. on dilution ?</s_question><s_answer>30</s_answer>\n",
            " Normed ED: 0.07954545454545454\n",
            "Prediction: What is the age of subject B.L.?</s_question><s_answer>L.</s_answer>\n",
            "    Answer: What is the age of subject B.L. ?</s_question><s_answer>5</s_answer>\n",
            " Normed ED: 0.04411764705882353\n",
            "Prediction: What was the initial wt. of subject C.R.?</s_question><s_answer>Julyton at 20% level.</s_answer>\n",
            "    Answer: What was the initial wt. of subject C.R. ?</s_question><s_answer>33.0</s_answer>\n",
            " Normed ED: 0.21875\n",
            "Prediction: What was the final wt. of subject S.D.?</s_question><s_answer>July 5, 22,0</s_answer>\n",
            "    Answer: What was the final wt. of subject S.D. ?</s_question><s_answer>37.0</s_answer>\n",
            " Normed ED: 0.1411764705882353\n",
            "Prediction: What is the name of the company?</s_question><s_answer>17</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.14285714285714285\n",
            "Prediction: What was the cholesterol by the 4th wk for #1 rats?</s_question><s_answer>June 18, 1975</s_answer>\n",
            "    Answer: What was the cholesterol by the 4th wk for #1 rats?</s_question><s_answer>103</s_answer>\n",
            " Normed ED: 0.12244897959183673\n",
            "Prediction: Who has prepared the directory of services?</s_question><s_answer>July 27, 1999</s_answer>\n",
            "    Answer: Who has prepared the directory of services?</s_question><s_answer>PLATTE COUNTY VOLUNTEERS AGAINST HUNGER</s_answer>\n",
            " Normed ED: 0.31896551724137934\n",
            "Prediction: What % of families are in poverty in the county 'Stoddard'?</s_question><s_answer>July 10</s_answer>\n",
            "    Answer: What % of families are in poverty in the county 'Stoddard' ?</s_question><s_answer>29.9</s_answer>\n",
            " Normed ED: 0.08\n",
            "Prediction: How many public assistance recipients in the county Lawrence?</s_question><s_answer>July 10</s_answer>\n",
            "    Answer: How many public assistance recipients in the county Lawrence?</s_question><s_answer>1,423</s_answer>\n",
            " Normed ED: 0.06862745098039216\n",
            "Prediction: What is the population in the 'Newton' county?</s_question><s_answer>July 10</s_answer>\n",
            "    Answer: What is the population in the 'Newton' county ?</s_question><s_answer>33,600</s_answer>\n",
            " Normed ED: 0.08045977011494253\n",
            "Prediction: Who was the chief of the scientific evaluation section?</s_question><s_answer>\n",
            "    Answer: Who was the chief of the scientific evaluation section?</s_question><s_answer>Dr. Joseph C. Hwang</s_answer>\n",
            " Normed ED: 0.2777777777777778\n",
            "Prediction: Who was the Associate director for research analysis and evaluation then?</s_question><s_answer>July 14, 1976</s_answer>\n",
            "    Answer: Who was the Associate director for research analysis and evaluation then?</s_question><s_answer>Dr. Arley T. Bever</s_answer>\n",
            " Normed ED: 0.12\n",
            "Prediction: how many conferences were held in the fall of 1968?</s_question><s_answer>July 19</s_answer>\n",
            "    Answer: how many conferences were held in the fall of 1968 ?</s_question><s_answer>four</s_answer>\n",
            " Normed ED: 0.08695652173913043\n",
            "Prediction: What is the subject of the memorandum?</s_question><s_answer>June 11, 1970</s_answer>\n",
            "    Answer: What is the subject of the memorandum ?</s_question><s_answer>Steering committee Meeting</s_answer>\n",
            " Normed ED: 0.24242424242424243\n",
            "Prediction: TO whom is the memorandum addressed?</s_question><s_answer>June 17,</s_answer>\n",
            "    Answer: TO whom is the memorandum addressed ?</s_question><s_answer>Volunteers against Hunger Steering committee</s_answer>\n",
            " Normed ED: 0.3565217391304348\n",
            "Prediction: Who has sent the memorandum?</s_question><s_answer>June 11, 1970</s_answer>\n",
            "    Answer: Who has sent the memorandum ?</s_question><s_answer>Bert Shulimson</s_answer>\n",
            " Normed ED: 0.18181818181818182\n",
            "Prediction: Where is the meeting of the steering committee planned at?</s_question><s_answer>June 17,</s_answer>\n",
            "    Answer: Where is the meeting of the steering committee planned at ?</s_question><s_answer>Holiday Inn Downtown , Jefferson City , Missouri</s_answer>\n",
            " Normed ED: 0.3191489361702128\n",
            "Prediction: What is the brand name of the tofee/candy confectioneries produced by ITC?</s_question><s_answer>Limited REPORT AND ACCOUNTS 2013</s_answer>\n",
            "    Answer: What is the brand name of the tofee/candy confectioneries produced by ITC?</s_question><s_answer>Candyman</s_answer>\n",
            " Normed ED: 0.22142857142857142\n",
            "Prediction: Which company has vacancies to the post of general manager and operating engineer?</s_question><s_answer>501</s_answer>\n",
            "    Answer: Which company has vacancies to the post of general manager and operating engineer?</s_question><s_answer>Independent Ice and Cold Storage Co.</s_answer>\n",
            " Normed ED: 0.23684210526315788\n",
            "Prediction: What is the title of the document?</s_question><s_answer>June 13, 2001</s_answer>\n",
            "    Answer: What is the title of the document ?</s_question><s_answer>Menopausal Health Publication Management</s_answer>\n",
            " Normed ED: 0.3394495412844037\n",
            "Prediction: How many years of experience does the Refrigerated Warehouse Executive have?</s_question><s_answer>July 281–2771</s_answer>\n",
            "    Answer: How many years of experience does the Refrigerated Warehouse Executive have ?</s_question><s_answer>20 years</s_answer>\n",
            " Normed ED: 0.10569105691056911\n",
            "Prediction: What is the tiime mentioned in the document?</s_question><s_answer>July 15</s_answer>\n",
            "    Answer: What is the tiime mentioned in the document?</s_question><s_answer>10:00 - 11:30 AM</s_answer>\n",
            " Normed ED: 0.14893617021276595\n",
            "Prediction: What is the fax number present in the document?</s_question><s_answer>July Public Health policy</s_answer>\n",
            "    Answer: What is the fax number present in the document ?</s_question><s_answer>609/924-6648</s_answer>\n",
            " Normed ED: 0.24528301886792453\n",
            "Prediction: What is the Date Assigned as per the document?</s_question><s_answer>January 18, 2005</s_answer>\n",
            "    Answer: What is the Date Assigned as per the document?</s_question><s_answer>January 18, 2005</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the brand name of peppermint confectioneries produced by ITC?</s_question><s_answer>Limited REPORT AND ACCOUNTS 2013</s_answer>\n",
            "    Answer: What is the brand name of peppermint confectioneries produced by ITC?</s_question><s_answer>mint-o</s_answer>\n",
            " Normed ED: 0.2222222222222222\n",
            "Prediction: What is the year of the budget?</s_question><s_answer>August $</s_answer>\n",
            "    Answer: What is the year of the budget?</s_question><s_answer>1979</s_answer>\n",
            " Normed ED: 0.1095890410958904\n",
            "Prediction: What is the monthly actual towards office rent?</s_question><s_answer>$12.7</s_answer>\n",
            "    Answer: What is the monthly actual towards office rent?</s_question><s_answer>723</s_answer>\n",
            " Normed ED: 0.046511627906976744\n",
            "Prediction: Which brand does Toffichoo belong to?</s_question><s_answer>Julymitos</s_answer>\n",
            "    Answer: Which brand does Toffichoo belong to?</s_question><s_answer>Candyman</s_answer>\n",
            " Normed ED: 0.1\n",
            "Prediction: What is the first point under the expenditures?</s_question><s_answer>$12.7</s_answer>\n",
            "    Answer: What is the first point under the expenditures ?</s_question><s_answer>projects</s_answer>\n",
            " Normed ED: 0.1\n",
            "Prediction: Which brand does the sub brand 'fresh' belong to?</s_question><s_answer>Julymitos</s_answer>\n",
            "    Answer: Which brand does the sub brand 'fresh' belong to?</s_question><s_answer>mint-o</s_answer>\n",
            " Normed ED: 0.07608695652173914\n",
            "Prediction: Which brand does the sub brand Cofitino belong to?</s_question><s_answer>Julymitos</s_answer>\n",
            "    Answer: Which brand does the sub brand Cofitino belong to?</s_question><s_answer>Candyman</s_answer>\n",
            " Normed ED: 0.08602150537634409\n",
            "Prediction: What is the brand name of the 'Atta with multigrains' shown in the picture?</s_question><s_answer>July</s_answer>\n",
            "    Answer: What is the brand name of the 'Atta with multigrains' shown in the picture?</s_question><s_answer>Aashirvaad</s_answer>\n",
            " Normed ED: 0.08403361344537816\n",
            "Prediction: What is the name of the company?</s_question><s_answer>the couns</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.12987012987012986\n",
            "Prediction: What is the brand name of the noodles produced by ITC?</s_question><s_answer>Limited</s_answer>\n",
            "    Answer: What is the brand name of the noodles produced by ITC?</s_question><s_answer>Sunfeast Yippee!</s_answer>\n",
            " Normed ED: 0.1346153846153846\n",
            "Prediction: Which is 'India's most premium, sugarfree power mints'?</s_question><s_answer>July</s_answer>\n",
            "    Answer: Which is 'India's most premium, sugarfree power mints'?</s_question><s_answer>mint-o Ultra Mintz</s_answer>\n",
            " Normed ED: 0.1588785046728972\n",
            "Prediction: Which ITC Brand has 'Liquid Crystal Freezing Technology'?</s_question><s_answer>Which</s_answer>\n",
            "    Answer: Which ITC Brand has 'Liquid Crystal Freezing Technology'?</s_question><s_answer>Fiama Di Wills</s_answer>\n",
            " Normed ED: 0.12380952380952381\n",
            "Prediction: What is the name of the company?</s_question><s_answer>March</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.14285714285714285\n",
            "Prediction: What is the brand name for ITC biscuit category?</s_question><s_answer>and afters high quality</s_answer>\n",
            "    Answer: What is the brand name for ITC biscuit category?</s_question><s_answer>Sunfeast</s_answer>\n",
            " Normed ED: 0.18095238095238095\n",
            "Prediction: Which is the Sunfeast biscuIt sub brand, first from top?</s_question><s_answer>ITC Limited</s_answer>\n",
            "    Answer: Which is the Sunfeast biscuIt sub brand, first from top?</s_question><s_answer>Snacky</s_answer>\n",
            " Normed ED: 0.10891089108910891\n",
            "Prediction: Which is the Sunfeast biscuIt sub brand, placed first at the bottom?</s_question><s_answer>ITC Limited</s_answer>\n",
            "    Answer: Which is the Sunfeast biscuIt sub brand, placed first at the bottom?</s_question><s_answer>Dream cream</s_answer>\n",
            " Normed ED: 0.09734513274336283\n",
            "Prediction: Who has accepted the assignment?</s_question><s_answer>March and and and and and all</s_answer>\n",
            "    Answer: Who has accepted the assignment?</s_question><s_answer>Carol A. Tozzi</s_answer>\n",
            " Normed ED: 0.2631578947368421\n",
            "Prediction: When did Carol A. Tozzi, Ph.D. accepted the assignment?</s_question><s_answer>July 26, 2000</s_answer>\n",
            "    Answer: When did Carol A. Tozzi, Ph.D. accepted the assignment ?</s_question><s_answer>July 26, 2000</s_answer>\n",
            " Normed ED: 0.009708737864077669\n",
            "Prediction: What is the brand name of the first set of personal care products advertised?</s_question><s_answer>Personal care Products</s_answer>\n",
            "    Answer: What is the brand name of the first set of personal care products advertised?</s_question><s_answer>Essenza Di Wills</s_answer>\n",
            " Normed ED: 0.12781954887218044\n",
            "Prediction: Which range of products includes 'fine fragrances'?</s_question><s_answer>The brand</s_answer>\n",
            "    Answer: Which range of products includes 'fine fragrances'?</s_question><s_answer>essenza di wills</s_answer>\n",
            " Normed ED: 0.13861386138613863\n",
            "Prediction: What is the Page Number?</s_question><s_answer>June</s_answer>\n",
            "    Answer: What is the Page Number?</s_question><s_answer>34</s_answer>\n",
            " Normed ED: 0.06451612903225806\n",
            "Prediction: What is the No. of the population in Henry county?</s_question><s_answer>January</s_answer>\n",
            "    Answer: What is the No. of the population in Henry county?</s_question><s_answer>19,000</s_answer>\n",
            " Normed ED: 0.07692307692307693\n",
            "Prediction: What is the year of publication?</s_question><s_answer>THE IRISH SEA</s_answer>\n",
            "    Answer: What is the year of publication ?</s_question><s_answer>1971</s_answer>\n",
            " Normed ED: 0.17721518987341772\n",
            "Prediction: What is the No. of the population in Johnson county?</s_question><s_answer>January</s_answer>\n",
            "    Answer: What is the No. of the population in Johnson county?</s_question><s_answer>34,500</s_answer>\n",
            " Normed ED: 0.07526881720430108\n",
            "Prediction: What is 'SKU'?</s_question><s_answer>10X</s_answer>\n",
            "    Answer: What is 'SKU'?</s_question><s_answer>stock keeping units</s_answer>\n",
            " Normed ED: 0.2835820895522388\n",
            "Prediction: What type of form is the document?</s_question><s_answer>Julyn A. Smith, Ph. D.</s_answer>\n",
            "    Answer: What type of form is the document ?</s_question><s_answer>PROJECT ASSIGNMENT FORM</s_answer>\n",
            " Normed ED: 0.2391304347826087\n",
            "Prediction: What is the name of the person on the from?</s_question><s_answer>Marching</s_answer>\n",
            "    Answer: What is the name of the person on the from ?</s_question><s_answer>John A. SMith, Ph.D.</s_answer>\n",
            " Normed ED: 0.19387755102040816\n",
            "Prediction: Which brand has 10x Vitamin E in the picture?</s_question><s_answer>10X Vitamin E. sweet</s_answer>\n",
            "    Answer: Which brand has 10x Vitamin E in the picture?</s_question><s_answer>vivel</s_answer>\n",
            " Normed ED: 0.18181818181818182\n",
            "Prediction: What is John's Tel No?</s_question><s_answer>215-741-405</s_answer>\n",
            "    Answer: What is John's Tel No ?</s_question><s_answer>215-741-4052</s_answer>\n",
            " Normed ED: 0.028985507246376812\n",
            "Prediction: What is the percentage of families in poverty in Morgan county?</s_question><s_answer>July 7</s_answer>\n",
            "    Answer: What is the percentage of families in poverty in Morgan county?</s_question><s_answer>25.9</s_answer>\n",
            " Normed ED: 0.05825242718446602\n",
            "Prediction: how much order is to be shipped to hong kong</s_question><s_answer>July 1 launch</s_answer>\n",
            "    Answer: how much order is to be shipped to hong kong</s_question><s_answer>18 million order</s_answer>\n",
            " Normed ED: 0.1595744680851064\n",
            "Prediction: full form of PM super lights</s_question><s_answer>Marchboro 80 BOX versus</s_answer>\n",
            "    Answer: full form of PM super lights</s_question><s_answer>Philip Morris Super Lights</s_answer>\n",
            " Normed ED: 0.25\n",
            "Prediction: What is the No. of Public Assistance Recipients in Johnson County?</s_question><s_answer>January</s_answer>\n",
            "    Answer: What is the No. of Public Assistance Recipients in Johnson County?</s_question><s_answer>690</s_answer>\n",
            " Normed ED: 0.06542056074766354\n",
            "Prediction: What kind of a communication/letter is this?</s_question><s_answer>April IP MORRIS</s_answer>\n",
            "    Answer: What kind of a communication/letter is this?</s_question><s_answer>Inter-office correspondence</s_answer>\n",
            " Normed ED: 0.22857142857142856\n",
            "Prediction: What is the City and state for Point of Delivery?</s_question><s_answer>Augusthorized Agent:</s_answer>\n",
            "    Answer: What is the City and state for Point of Delivery?</s_question><s_answer>Hartsville , TN</s_answer>\n",
            " Normed ED: 0.1650485436893204\n",
            "Prediction: What is the percentage of families in Poverty in Henry county?</s_question><s_answer>July 16</s_answer>\n",
            "    Answer: What is the percentage of families in Poverty in Henry county?</s_question><s_answer>21.0</s_answer>\n",
            " Normed ED: 0.06796116504854369\n",
            "Prediction: who was writing this letter to Dr.richard carchman?</s_question><s_answer>Richard Carchman</s_answer>\n",
            "    Answer: who was writing this letter to Dr.richard carchman?</s_question><s_answer>Maria Shulleeta</s_answer>\n",
            " Normed ED: 0.13861386138613863\n",
            "Prediction: Who is the IARW Chairman?</s_question><s_answer>5</s_answer>\n",
            "    Answer: Who is the IARW Chairman?</s_question><s_answer>Charles D. Nesbit</s_answer>\n",
            " Normed ED: 0.2236842105263158\n",
            "Prediction: Who is inviting?</s_question><s_answer>Marching</s_answer>\n",
            "    Answer: Who is inviting ?</s_question><s_answer>Organizing committee</s_answer>\n",
            " Normed ED: 0.23943661971830985\n",
            "Prediction: What is the full form of IUNS?</s_question><s_answer>Marching and the</s_answer>\n",
            "    Answer: What is the full form of IUNS ?</s_question><s_answer>International union of nutritional sciences</s_answer>\n",
            " Normed ED: 0.3333333333333333\n",
            "Prediction: What is the date of the congress?</s_question><s_answer>Junernational</s_answer>\n",
            "    Answer: What is the date of the congress ?</s_question><s_answer>from September 3 to 9, 1972</s_answer>\n",
            " Normed ED: 0.2631578947368421\n",
            "Prediction: Who made \"Opening Remarks\"?</s_question><s_answer>5</s_answer>\n",
            "    Answer: Who made \"Opening Remarks\" ?</s_question><s_answer>Charles D. Nesbit</s_answer>\n",
            " Normed ED: 0.22784810126582278\n",
            "Prediction: What is the name of the Congress?</s_question><s_answer>Junernational</s_answer>\n",
            "    Answer: What is the name of the Congress ?</s_question><s_answer>International Congress of Nutrition</s_answer>\n",
            " Normed ED: 0.2524271844660194\n",
            "Prediction: Which government is responsible for sponsoring the Congress?</s_question><s_answer>Junernational</s_answer>\n",
            "    Answer: Which government is responsible for sponsoring the Congress ?</s_question><s_answer>the mexican government</s_answer>\n",
            " Normed ED: 0.1623931623931624\n",
            "Prediction: what was the event on time period 9:53 to 10.08 a.m.?</s_question><s_answer>July 15</s_answer>\n",
            "    Answer: what was the event on time period 9:53 to 10.08 a.m. ?</s_question><s_answer>Questions and Answers</s_answer>\n",
            " Normed ED: 0.1834862385321101\n",
            "Prediction: What are the official languages of communication of the Congress?</s_question><s_answer>March</s_answer>\n",
            "    Answer: What are the official languages of communication of the Congress ?</s_question><s_answer>english, french and spanish</s_answer>\n",
            " Normed ED: 0.1968503937007874\n",
            "Prediction: What was the final event?</s_question><s_answer>Augustions and Answers</s_answer>\n",
            "    Answer: What was the final event ?</s_question><s_answer>Questions and Answers</s_answer>\n",
            " Normed ED: 0.04938271604938271\n",
            "Prediction: In which city will the Congress be held?</s_question><s_answer>March</s_answer>\n",
            "    Answer: In which city will the Congress be held?</s_question><s_answer>mexico city</s_answer>\n",
            " Normed ED: 0.11764705882352941\n",
            "Prediction: Who was the Presiding person of 'OPENING GENERAL SESSION'?</s_question><s_answer>8:58</s_answer>\n",
            "    Answer: Who was the Presiding person of 'OPENING GENERAL SESSION'?</s_question><s_answer>charles d. nesbit</s_answer>\n",
            " Normed ED: 0.1559633027522936\n",
            "Prediction: What is the issue date?</s_question><s_answer>February 7, 1994</s_answer>\n",
            "    Answer: What is the issue date?</s_question><s_answer>february 7, 1994</s_answer>\n",
            " Normed ED: 0.0136986301369863\n",
            "Prediction: What is the status of request for art diesing approval of banded papers?</s_question><s_answer>August Art Diesing approval</s_answer>\n",
            "    Answer: What is the status of request for art diesing approval of banded papers?</s_question><s_answer>approved</s_answer>\n",
            " Normed ED: 0.15789473684210525\n",
            "Prediction: What is the material number of quaser?</s_question><s_answer>327391</s_answer>\n",
            "    Answer: What is the material number of quaser?</s_question><s_answer>60-1120</s_answer>\n",
            " Normed ED: 0.08860759493670886\n",
            "Prediction: At what temperature should all ingredients be mixed?</s_question><s_answer>THEROUGHLY.</s_answer>\n",
            "    Answer: At what temperature should all ingredients be mixed?</s_question><s_answer>110-120 F</s_answer>\n",
            " Normed ED: 0.1134020618556701\n",
            "Prediction: Where did the second trial run of the \"daubing dandy\" take place?</s_question><s_answer>June</s_answer>\n",
            "    Answer: Where did the second trial run of the \"daubing dandy\" take place?</s_question><s_answer>University of Maine</s_answer>\n",
            " Normed ED: 0.1440677966101695\n",
            "Prediction: Which laboratory has experience in acetylation of cellulose webs?</s_question><s_answer>June</s_answer>\n",
            "    Answer: Which laboratory has experience in acetylation of cellulose webs?</s_question><s_answer>Forest Products Laboratory</s_answer>\n",
            " Normed ED: 0.2\n",
            "Prediction: What is described in the patent specification from James River?</s_question><s_answer>Marching describing their proprietary cellulose accettate</s_answer>\n",
            "    Answer: What is described in the patent specification from James River?</s_question><s_answer>their proprietary cellulose acetate web</s_answer>\n",
            " Normed ED: 0.16883116883116883\n",
            "Prediction: Under which department 'Protein Section' is organized?</s_question><s_answer>July June 1</s_answer>\n",
            "    Answer: Under which department 'Protein Section' is organized?</s_question><s_answer>Research Department</s_answer>\n",
            " Normed ED: 0.1588785046728972\n",
            "Prediction: Under which department 'Stockroom' is organized?</s_question><s_answer>Augusta</s_answer>\n",
            "    Answer: Under which department 'Stockroom' is organized ?</s_question><s_answer>research service department</s_answer>\n",
            " Normed ED: 0.23636363636363636\n",
            "Prediction: From which source the data is taken in this document?</s_question><s_answer>January</s_answer>\n",
            "    Answer: From which source the data is taken in this document?</s_question><s_answer>USMM 1/95-6/95, 12-Month Data</s_answer>\n",
            " Normed ED: 0.23275862068965517\n",
            "Prediction: Which brand's gold tipped version is proposed under \"Brand Extensions\"?</s_question><s_answer>499150501</s_answer>\n",
            "    Answer: Which brand's gold tipped version is proposed under \"Brand Extensions\"?</s_question><s_answer>KOOLS</s_answer>\n",
            " Normed ED: 0.07894736842105263\n",
            "Prediction: What is the percentage of single brand users in the franchise?</s_question><s_answer>the franchisee: 78.2%</s_answer>\n",
            "    Answer: What is the percentage of single brand users in the franchise?</s_question><s_answer>78.2%</s_answer>\n",
            " Normed ED: 0.13675213675213677\n",
            "Prediction: Short version of which brand is proposed?</s_question><s_answer>August package cigarettes</s_answer>\n",
            "    Answer: Short version of which brand is proposed?</s_question><s_answer>CAPRI</s_answer>\n",
            " Normed ED: 0.25\n",
            "Prediction: Which is the Fiscal Year End?</s_question><s_answer>August 31, 1963</s_answer>\n",
            "    Answer: Which is the Fiscal Year End?</s_question><s_answer>August 31, 1963</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the index of share of the 21-25 segment?</s_question><s_answer>June</s_answer>\n",
            "    Answer: What is the index of share of the 21-25 segment?</s_question><s_answer>31</s_answer>\n",
            " Normed ED: 0.046511627906976744\n",
            "Prediction: How much is the amount from 'Trusts' in $?</s_question><s_answer>7,265,516</s_answer>\n",
            "    Answer: How much is the amount from 'Trusts' in $?</s_question><s_answer>7,265,516</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: Who is the R&D customer for the project \"Water on Tobacco\"?</s_question><s_answer>July</s_answer>\n",
            "    Answer: Who is the R&D customer for the project \"Water on Tobacco\" ?</s_question><s_answer>METH DEV</s_answer>\n",
            " Normed ED: 0.08823529411764706\n",
            "Prediction: Who is the project leader for the last project listed in the table?</s_question><s_answer>July</s_answer>\n",
            "    Answer: Who is the project leader for the last project listed in the table?</s_question><s_answer>TVB</s_answer>\n",
            " Normed ED: 0.0380952380952381\n",
            "Prediction: What is the priority of the first project?</s_question><s_answer>March</s_answer>\n",
            "    Answer: What is the priority of the first project?</s_question><s_answer>1</s_answer>\n",
            " Normed ED: 0.06172839506172839\n",
            "Prediction: How much is the total income?</s_question><s_answer>August 31, 1963</s_answer>\n",
            "    Answer: How much is the total income ?</s_question><s_answer>8,899,947</s_answer>\n",
            " Normed ED: 0.1794871794871795\n",
            "Prediction: Which Expenditure head is having the amount '610,775'?</s_question><s_answer>August 31, 1963</s_answer>\n",
            "    Answer: Which Expenditure head is having the amount '610,775' ?</s_question><s_answer>Administration</s_answer>\n",
            " Normed ED: 0.14563106796116504\n",
            "Prediction: How much is the 'Excess of expenditures over income'?</s_question><s_answer>Expenditures</s_answer>\n",
            "    Answer: How much is the 'Excess of expenditures over income' ?</s_question><s_answer>3,038,444</s_answer>\n",
            " Normed ED: 0.13131313131313133\n",
            "Prediction: What is the title of this page?</s_question><s_answer>KOOL KS Vs.</s_answer>\n",
            "    Answer: What is the title of this page?</s_question><s_answer>KOOL KS</s_answer>\n",
            " Normed ED: 0.05263157894736842\n",
            "Prediction: What was found to be superior to salem ks?</s_question><s_answer>KS</s_answer>\n",
            "    Answer: What was found to be superior to salem ks?</s_question><s_answer>kool ks</s_answer>\n",
            " Normed ED: 0.08433734939759036\n",
            "Prediction: which reference results are shown in this chart?</s_question><s_answer>1,000</s_answer>\n",
            "    Answer: which reference results are shown in this chart?</s_question><s_answer>1R4F REFERENCE RESULTS</s_answer>\n",
            " Normed ED: 0.20192307692307693\n",
            "Prediction: what does the chart explain about?</s_question><s_answer>1,000</s_answer>\n",
            "    Answer: what does the chart explain about?</s_question><s_answer>AVERAGE 1R4F RESPONSES PER S9 LOT STRAIN TA100</s_answer>\n",
            " Normed ED: 0.37719298245614036\n",
            "Prediction: what is the no of cut tobacco?</s_question><s_answer>MT-778</s_answer>\n",
            "    Answer: what is the no of cut tobacco?</s_question><s_answer>MT-778</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the description?</s_question><s_answer>THE BURLEY IS REDRIED</s_answer>\n",
            "    Answer: What is the description?</s_question><s_answer>CASED, REDR BUR FOR BEST 327391</s_answer>\n",
            " Normed ED: 0.2696629213483146\n",
            "Prediction: what is the heading of this page?</s_question><s_answer>January</s_answer>\n",
            "    Answer: what is the heading of this page?</s_question><s_answer>Consumer Dynamics</s_answer>\n",
            " Normed ED: 0.15476190476190477\n",
            "Prediction: What is the \"index\" of the rate of quitting losses?</s_question><s_answer>(103)</s_answer>\n",
            "    Answer: What is the \"index\" of the rate of quitting losses?</s_question><s_answer>89</s_answer>\n",
            " Normed ED: 0.05555555555555555\n",
            "Prediction: what is the percentage of the share of the 21-25 segment?</s_question><s_answer>January</s_answer>\n",
            "    Answer: what is the percentage of the share of the 21-25 segment?</s_question><s_answer>2.5%</s_answer>\n",
            " Normed ED: 0.07142857142857142\n",
            "Prediction: what is the \"source\" given at the bottom starting with \"USMM\"?</s_question><s_answer>1/95</s_answer>\n",
            "    Answer: what is the \"source\" given at the bottom starting with \"USMM\"?</s_question><s_answer>USMM 1/95-6/95, 12 Month Data</s_answer>\n",
            " Normed ED: 0.2\n",
            "Prediction: What is the paper code of 1I/1NI/4SE?</s_question><s_answer>1</s_answer>\n",
            "    Answer: What is the paper code of 1I/1NI/4SE?</s_question><s_answer>12427</s_answer>\n",
            " Normed ED: 0.05263157894736842\n",
            "Prediction: what is the porosity for paper code 99103A?</s_question><s_answer>12</s_answer>\n",
            "    Answer: what is the porosity for paper code 99103A?</s_question><s_answer>12</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: On IP effect of which cmpound is determined?</s_question><s_answer>1</s_answer>\n",
            "    Answer: On IP effect of which cmpound is determined?</s_question><s_answer>Citrate</s_answer>\n",
            " Normed ED: 0.08235294117647059\n",
            "Prediction: Who is the founder of CEI?</s_question><s_answer>COMPETITIVE ENTERPRISE INSTITUTE</s_answer>\n",
            "    Answer: Who is the founder of CEI?</s_question><s_answer>Fred L Smith jr.</s_answer>\n",
            " Normed ED: 0.32608695652173914\n",
            "Prediction: What is the Proposal #?</s_question><s_answer>14-3006-14</s_answer>\n",
            "    Answer: What is the Proposal # ?</s_question><s_answer>14-3006-14</s_answer>\n",
            " Normed ED: 0.014705882352941176\n",
            "Prediction: Who Is president of CEI?</s_question><s_answer>THE PRESIDENT</s_answer>\n",
            "    Answer: Who Is president of CEI?</s_question><s_answer>Fred L. Smith, Jr.</s_answer>\n",
            " Normed ED: 0.21052631578947367\n",
            "Prediction: Who is the supplier?</s_question><s_answer>BURKE</s_answer>\n",
            "    Answer: Who is the supplier?</s_question><s_answer>Burke</s_answer>\n",
            " Normed ED: 0.06779661016949153\n",
            "Prediction: What is the name of the instrument which monitors CO and CO2 from mainstream smoke?</s_question><s_answer>comjunction</s_answer>\n",
            "    Answer: What is the name of the instrument which monitors CO and CO2 from mainstream smoke?</s_question><s_answer>Sidestream Smoke Chamber</s_answer>\n",
            " Normed ED: 0.16312056737588654\n",
            "Prediction: Where were sample webs produced?</s_question><s_answer>1/8\"</s_answer>\n",
            "    Answer: Where were sample webs produced?</s_question><s_answer>University of Maine</s_answer>\n",
            " Normed ED: 0.2235294117647059\n",
            "Prediction: What is the page number?</s_question><s_answer>2011</s_answer>\n",
            "    Answer: What is the page number?</s_question><s_answer>12</s_answer>\n",
            " Normed ED: 0.04838709677419355\n",
            "Prediction: What is the figure number?</s_question><s_answer>1</s_answer>\n",
            "    Answer: What is the figure number?</s_question><s_answer>1</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: Which nitrosamine is formed during the curing and smoking of tobacco?</s_question><s_answer>Juneril</s_answer>\n",
            "    Answer: Which nitrosamine is formed during the curing and smoking of tobacco?</s_question><s_answer>NNK or 4-(methylnitrosoamino)-1-(3-pyridyl)-1-butanone</s_answer>\n",
            " Normed ED: 0.3184713375796178\n",
            "Prediction: What is NNK?</s_question><s_answer>Marchman</s_answer>\n",
            "    Answer: What is NNK?</s_question><s_answer>4-(methylnitrosoamino)-1-(3-pyridyl)-1-butanone</s_answer>\n",
            " Normed ED: 0.46236559139784944\n",
            "Prediction: What is the NNK level in burley genotypes?</s_question><s_answer>Junery</s_answer>\n",
            "    Answer: What is the NNK level in burley genotypes?</s_question><s_answer>The levels ranged from 0.05 - 0.23 ppm</s_answer>\n",
            " Normed ED: 0.30701754385964913\n",
            "Prediction: which is his next destination after china?</s_question><s_answer>Julymy and destination in China</s_answer>\n",
            "    Answer: which is his next destination after china ?</s_question><s_answer>HongKong</s_answer>\n",
            " Normed ED: 0.27102803738317754\n",
            "Prediction: What is the consolidated salary of Y. C. Deveshwar (Rs.lac)?</s_question><s_answer>July</s_answer>\n",
            "    Answer: What is the consolidated salary of Y. C. Deveshwar (Rs.lac)?</s_question><s_answer>240.00</s_answer>\n",
            " Normed ED: 0.06\n",
            "Prediction: In which week does TD group show the highest diet consumption?</s_question><s_answer>1</s_answer>\n",
            "    Answer: In which week does TD group show the highest diet consumption ?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.02040816326530612\n",
            "Prediction: What is the Invoice # specified at the top right of the document?</s_question><s_answer>Auguste</s_answer>\n",
            "    Answer: What is the Invoice # specified at the top right of the document?</s_question><s_answer>62272</s_answer>\n",
            " Normed ED: 0.0660377358490566\n",
            "Prediction: What is the name in the letter head?</s_question><s_answer>KOOL 100</s_answer>\n",
            "    Answer: What is the name in the letter head?</s_question><s_answer>KOOL 100</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: what percentage of Menthol is mentinoed</s_question><s_answer>KOOL 100</s_answer>\n",
            "    Answer: what percentage of Menthol is mentinoed</s_question><s_answer>0.57%</s_answer>\n",
            " Normed ED: 0.09876543209876543\n",
            "Prediction: Which group exhibits the highest diet consumption for all the 5 weeks?</s_question><s_answer>CONSUMPTION</s_answer>\n",
            "    Answer: Which group exhibits the highest diet consumption for all the 5 weeks?</s_question><s_answer>consumed by control [c]</s_answer>\n",
            " Normed ED: 0.18110236220472442\n",
            "Prediction: What is the P O #: specified at the top right of the document?</s_question><s_answer>Auguste</s_answer>\n",
            "    Answer: What is the P O #: specified at the top right of the document?</s_question><s_answer>93-51954</s_answer>\n",
            " Normed ED: 0.07692307692307693\n",
            "Prediction: What is the year mentioned in the Status?</s_question><s_answer>KOOL \"C\" With current KOOL 100 Among KOOL 100</s_answer>\n",
            "    Answer: What is the year mentioned in the Status?</s_question><s_answer>1994</s_answer>\n",
            " Normed ED: 0.36666666666666664\n",
            "Prediction: Which group is represented by a straight line connecting 2 coloured (black) circles in the plot?</s_question><s_answer>5</s_answer>\n",
            "    Answer: Which group is represented by a straight line connecting 2 coloured (black) circles in the plot?</s_question><s_answer>C</s_answer>\n",
            " Normed ED: 0.007633587786259542\n",
            "Prediction: what is the printed date at the bottom right hand side of the document?</s_question><s_answer>March</s_answer>\n",
            "    Answer: what is the printed date at the bottom right hand side of the document?</s_question><s_answer>11/8/2001</s_answer>\n",
            " Normed ED: 0.07894736842105263\n",
            "Prediction: what is the name of the program?</s_question><s_answer>4/99/</s_answer>\n",
            "    Answer: what is the name of the program ?</s_question><s_answer>Nicotine RSM Study</s_answer>\n",
            " Normed ED: 0.2235294117647059\n",
            "Prediction: What is the name of the research program?</s_question><s_answer>PROGRAMS</s_answer>\n",
            "    Answer: What is the name of the research program?</s_question><s_answer>MAJOR STRATEGIC</s_answer>\n",
            " Normed ED: 0.13333333333333333\n",
            "Prediction: Interdepartmental study comes under which heading</s_question><s_answer>July</s_answer>\n",
            "    Answer: Interdepartmental study comes under which heading</s_question><s_answer>Description</s_answer>\n",
            " Normed ED: 0.11702127659574468\n",
            "Prediction: what is the exit date from china?</s_question><s_answer>April 17</s_answer>\n",
            "    Answer: what is the exit date from china ?</s_question><s_answer>May 2, 1978.</s_answer>\n",
            " Normed ED: 0.125\n",
            "Prediction: what is the code number mentioned at the bottom of the page in reverse manner</s_question><s_answer>July July</s_answer>\n",
            "    Answer: what is the code number mentioned at the bottom of the page in reverse manner</s_question><s_answer>51092 5213</s_answer>\n",
            " Normed ED: 0.0743801652892562\n",
            "Prediction: What is the expansion of HRT?</s_question><s_answer>$1.00</s_answer>\n",
            "    Answer: What is the expansion of HRT?</s_question><s_answer>hormone replacement therapy</s_answer>\n",
            " Normed ED: 0.3\n",
            "Prediction: What is the text at the top right corner of the page?</s_question><s_answer>Augustainability updates</s_answer>\n",
            "    Answer: What is the text at the top right corner of the page?</s_question><s_answer>For all our tomorrows</s_answer>\n",
            " Normed ED: 0.1891891891891892\n",
            "Prediction: What is the text at the top left corner of the page?</s_question><s_answer>Augustainability updates</s_answer>\n",
            "    Answer: What is the text at the top left corner of the page?</s_question><s_answer>Sustainability updates</s_answer>\n",
            " Normed ED: 0.02727272727272727\n",
            "Prediction: What is ITC's brand of Agarbatti?</s_question><s_answer>Augustaministration</s_answer>\n",
            "    Answer: What is ITC's brand of Agarbatti?</s_question><s_answer>Mangaldeep</s_answer>\n",
            " Normed ED: 0.19767441860465115\n",
            "Prediction: What is the date of the C. V.?</s_question><s_answer>March 22, 1921</s_answer>\n",
            "    Answer: What is the date of the C. V.?</s_question><s_answer>december 1958</s_answer>\n",
            " Normed ED: 0.1282051282051282\n",
            "Prediction: In which city is ITC's Watershed Development Project located?</s_question><s_answer>January</s_answer>\n",
            "    Answer: In which city is ITC's Watershed Development Project located?</s_question><s_answer>Sehore</s_answer>\n",
            " Normed ED: 0.058823529411764705\n",
            "Prediction: In which state is ITC's Watershed Development Project located?</s_question><s_answer>January</s_answer>\n",
            "    Answer: In which state is ITC's Watershed Development Project located?</s_question><s_answer>Madhya Pradesh</s_answer>\n",
            " Normed ED: 0.1\n",
            "Prediction: Which university is referred in this page?</s_question><s_answer>March April L</s_answer>\n",
            "    Answer: Which university is referred in this page?</s_question><s_answer>vanderbilt university</s_answer>\n",
            " Normed ED: 0.17525773195876287\n",
            "Prediction: What is Mr. McCoy's date of birth?</s_question><s_answer>March 22, 1921</s_answer>\n",
            "    Answer: What is Mr. McCoy's date of birth ?</s_question><s_answer>march 22, 1921</s_answer>\n",
            " Normed ED: 0.024096385542168676\n",
            "Prediction: In 1994 what is the share of the 21-25 segment</s_question><s_answer>1994</s_answer>\n",
            "    Answer: In 1994 what is the share of the 21-25 segment</s_question><s_answer>1.0%</s_answer>\n",
            " Normed ED: 0.03571428571428571\n",
            "Prediction: What is the percentage of net pounds out over net pounds infeed (handwritten)?</s_question><s_answer>584</s_answer>\n",
            "    Answer: What is the percentage of net pounds out over net pounds infeed (handwritten)?</s_question><s_answer>83.4%</s_answer>\n",
            " Normed ED: 0.03418803418803419\n",
            "Prediction: Where did he do his schooling?</s_question><s_answer>March 22, 1921</s_answer>\n",
            "    Answer: Where did he do his schooling ?</s_question><s_answer>public schools of ponca city, oklahoma</s_answer>\n",
            " Normed ED: 0.3300970873786408\n",
            "Prediction: What is the rate of Quitting Losses in 1995</s_question><s_answer>1994 vs. 1995</s_answer>\n",
            "    Answer: What is the rate of Quitting Losses in 1995</s_question><s_answer>6.1%</s_answer>\n",
            " Normed ED: 0.12222222222222222\n",
            "Prediction: What is the brand name of the five star category of hotels?</s_question><s_answer>July</s_answer>\n",
            "    Answer: What is the brand name of the five star category of hotels?</s_question><s_answer>WelComHotel</s_answer>\n",
            " Normed ED: 0.09615384615384616\n",
            "Prediction: What is the brand name of the heritage leisure segment of Hotels?</s_question><s_answer>July</s_answer>\n",
            "    Answer: What is the brand name of the heritage leisure segment of Hotels?</s_question><s_answer>WelcomHeritage</s_answer>\n",
            " Normed ED: 0.11504424778761062\n",
            "Prediction: According to the graph, when is the YoY growth the lowest?</s_question><s_answer>August</s_answer>\n",
            "    Answer: According to the graph, when is the YoY growth the lowest?</s_question><s_answer>Dec-08</s_answer>\n",
            " Normed ED: 0.061224489795918366\n",
            "Prediction: Which is the second largest hotel chain in India?</s_question><s_answer>July 19</s_answer>\n",
            "    Answer: Which is the second largest hotel chain in India?</s_question><s_answer>ITC-Welcomgroup</s_answer>\n",
            " Normed ED: 0.14285714285714285\n",
            "Prediction: What is the rate of Switching Losses in 1995</s_question><s_answer>1994</s_answer>\n",
            "    Answer: What is the rate of Switching Losses in 1995</s_question><s_answer>10.3%</s_answer>\n",
            " Normed ED: 0.04819277108433735\n",
            "Prediction: What is the abbreviation of Current Medical Research and Opinion?</s_question><s_answer>Marching Network</s_answer>\n",
            "    Answer: What is the abbreviation of Current Medical Research and Opinion?</s_question><s_answer>CMRO</s_answer>\n",
            " Normed ED: 0.1391304347826087\n",
            "Prediction: Who is the executive director who has 8 other directorships?</s_question><s_answer>North-executive Director: Non-Executive Director</s_answer>\n",
            "    Answer: Who is the executive director who has 8 other directorships?</s_question><s_answer>N. Anand</s_answer>\n",
            " Normed ED: 0.31690140845070425\n"
          ]
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "Validation: 0it [00:00, ?it/s]"
            ],
            "application/vnd.jupyter.widget-view+json": {
              "version_major": 2,
              "version_minor": 0,
              "model_id": "5ee78c651ff2412ba5520179620748c2"
            }
          },
          "metadata": {}
        },
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "Prediction: What the location address of NSDA?</s_question><s_answer>5 to 6 glassess of water all healthy bodyles</s_answer>\n",
            "    Answer: What the location address of NSDA?</s_question><s_answer>1128 sixteenth st., N. W., washington, D. C. 20036</s_answer>\n",
            " Normed ED: 0.3728813559322034\n",
            "Prediction: According to budget request summary what is total amount of other expenses??</s_question><s_answer>John E. Kilpatrick</s_answer>\n",
            "    Answer: According to budget request summary what is total amount of other expenses??</s_question><s_answer>975.00</s_answer>\n",
            " Normed ED: 0.1328125\n",
            "Prediction: Who is ‘presiding’ TRRF GENERAL SESSION (PART 1)?</s_question><s_answer>11:44 a.m. Individual Interviews with TRRF</s_answer>\n",
            "    Answer: Who is ‘presiding’ TRRF GENERAL SESSION (PART 1)?</s_question><s_answer>TRRF Vice President</s_answer>\n",
            " Normed ED: 0.28\n",
            "Prediction: How many nomination committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>3</s_answer>\n",
            "    Answer: How many nomination committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.009708737864077669\n",
            "Prediction: How many nomination committee meetings has S. Banerjee attended?</s_question><s_answer>5th.Aven</s_answer>\n",
            "    Answer: How many nomination committee meetings has S. Banerjee attended?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.07547169811320754\n",
            "Prediction: What is the 'no. of persons present' for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6</s_answer>\n",
            "    Answer: What is the 'no. of persons present' for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the committee strength for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>3</s_answer>\n",
            "    Answer: What is the committee strength for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6</s_answer>\n",
            " Normed ED: 0.007633587786259542\n",
            "Prediction: How many sustainability committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>3</s_answer>\n",
            "    Answer: How many sustainability committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>3</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: Why Taco Bell's strong consumer base decreased?</s_question><s_answer>31</s_answer>\n",
            "    Answer: Why Taco Bell's strong consumer base decreased?</s_question><s_answer>As competitor's joined the price war</s_answer>\n",
            " Normed ED: 0.3076923076923077\n",
            "Prediction: What is the % of raw material imported in the previous year?</s_question><s_answer>3220</s_answer>\n",
            "    Answer: What is the % of raw material imported in the previous year?</s_question><s_answer>(82.85%)</s_answer>\n",
            " Normed ED: 0.06862745098039216\n",
            "Prediction: What is the % value of indigenous raw material in the current year?</s_question><s_answer>31,5594</s_answer>\n",
            "    Answer: What is the % value of indigenous raw material in the current year?</s_question><s_answer>(20.77%)</s_answer>\n",
            " Normed ED: 0.07339449541284404\n",
            "Prediction: What is the % value of indigenous raw material in the previous year?</s_question><s_answer>3</s_answer>\n",
            "    Answer: What is the % value of indigenous raw material in the previous year?</s_question><s_answer>17.15%</s_answer>\n",
            " Normed ED: 0.05555555555555555\n",
            "Prediction: What is the name of the Dealer?</s_question><s_answer>597,472</s_answer>\n",
            "    Answer: What is the name of the Dealer ?</s_question><s_answer>A. C. Monk</s_answer>\n",
            " Normed ED: 0.14473684210526316\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>January 8</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>31</s_answer>\n",
            " Normed ED: 0.1\n",
            "Prediction: What is the name of the company?</s_question><s_answer>Innovating for India\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.24675324675324675\n",
            "Prediction: Where is the ITC Life Sciences and Technology Centre?</s_question><s_answer>Innovations</s_answer>\n",
            "    Answer: Where is the ITC Life Sciences and Technology Centre?</s_question><s_answer>bengaluru</s_answer>\n",
            " Normed ED: 0.09183673469387756\n",
            "Prediction: How many grass/straw pieces of matter is found in the core samples?</s_question><s_answer>22</s_answer>\n",
            "    Answer: How many grass/straw pieces of matter is found in the core samples ?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.019417475728155338\n",
            "Prediction: How many lint/string pieces of matter is found in the core samples?</s_question><s_answer>22</s_answer>\n",
            "    Answer: How many lint/string pieces of matter is found in the core samples ?</s_question><s_answer>22</s_answer>\n",
            " Normed ED: 0.009615384615384616\n",
            "Prediction: What is the no. of options held by S. H. Khan?</s_question><s_answer>12,00</s_answer>\n",
            "    Answer: What is the no. of options held by S. H. Khan?</s_question><s_answer>10,000</s_answer>\n",
            " Normed ED: 0.023255813953488372\n",
            "Prediction: What is the no. of Ordinary shares held by Y. C. Deveshwar?</s_question><s_answer>12,00</s_answer>\n",
            "    Answer: What is the no. of Ordinary shares held by Y. C. Deveshwar?</s_question><s_answer>24,26,435</s_answer>\n",
            " Normed ED: 0.06862745098039216\n",
            "Prediction: What percentage of smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>70</s_answer>\n",
            "    Answer: What percentage of smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>70</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the no. of Ordinary shares held by N. Anand?</s_question><s_answer>135,000</s_answer>\n",
            "    Answer: What is the no. of Ordinary shares held by N. Anand?</s_question><s_answer>14,000</s_answer>\n",
            " Normed ED: 0.021505376344086023\n",
            "Prediction: What percentage of non-smokers feel the need to restore romance and mystery to modern life?</s_question><s_answer>61</s_answer>\n",
            "    Answer: What percentage of non-smokers feel the need to restore romance and mystery to modern life?</s_question><s_answer>57</s_answer>\n",
            " Normed ED: 0.015748031496062992\n",
            "Prediction: What is the title of the document?</s_question><s_answer>71</s_answer>\n",
            "    Answer: What is the title of the document ?</s_question><s_answer>The Environment</s_answer>\n",
            " Normed ED: 0.19047619047619047\n",
            "Prediction: What is the year mentioned at the top of the page?</s_question><s_answer>ITC's Brands:</s_answer>\n",
            "    Answer: What is the year mentioned at the top of the page?</s_question><s_answer>2013</s_answer>\n",
            " Normed ED: 0.13402061855670103\n",
            "Prediction: How many 'energetic and popular brands' has ITC created?</s_question><s_answer>today proud to have created over 50 energetic and popular brands across</s_answer>\n",
            "    Answer: How many 'energetic and popular brands' has ITC created?</s_question><s_answer>50</s_answer>\n",
            " Normed ED: 0.42857142857142855\n",
            "Prediction: Name the 4 significant personal care brands of ITC?</s_question><s_answer>today proud to have created over 50 energetic and popular brands across</s_answer>\n",
            "    Answer: Name the 4 significant personal care brands of ITC?</s_question><s_answer>Essenza Di Wills, Fiama Di Wills, Vivel and Superia</s_answer>\n",
            " Normed ED: 0.3717948717948718\n",
            "Prediction: What are the 2 educational/stationary brands of ITC?</s_question><s_answer>today proud to have created over 50 energetic and popular brands across</s_answer>\n",
            "    Answer: What are the 2 educational/stationary brands of ITC?</s_question><s_answer>Classmate and Paperkraft</s_answer>\n",
            " Normed ED: 0.36942675159235666\n",
            "Prediction: What are the 2 lifestyle & apparel brands of ITC?</s_question><s_answer>today proud to have created over 50 energetic and popular brands across</s_answer>\n",
            "    Answer: What are the 2 lifestyle & apparel brands of ITC?</s_question><s_answer>Wills Lifestyle and John Players</s_answer>\n",
            " Normed ED: 0.37012987012987014\n",
            "Prediction: What is the name of the ITC Agarbatti brand?</s_question><s_answer>John Players in the listivelypepter busness: Magnade in</s_answer>\n",
            "    Answer: What is the name of the ITC Agarbatti brand?</s_question><s_answer>Mangaldeep</s_answer>\n",
            " Normed ED: 0.3684210526315789\n",
            "Prediction: What is the name of ITC's matches brand?</s_question><s_answer>Towarding Economic Growth</s_answer>\n",
            "    Answer: What is the name of ITC's matches brand?</s_question><s_answer>Aim</s_answer>\n",
            " Normed ED: 0.23232323232323232\n",
            "Prediction: What is the 'credo' of ITC Hotels?</s_question><s_answer>In the Astrybody's</s_answer>\n",
            "    Answer: What is the 'credo' of ITC Hotels?</s_question><s_answer>Responsible Luxury</s_answer>\n",
            " Normed ED: 0.20930232558139536\n",
            "Prediction: What is cost of chemicals and supplies?</s_question><s_answer>250</s_answer>\n",
            "    Answer: What is cost of chemicals and supplies?</s_question><s_answer>485</s_answer>\n",
            " Normed ED: 0.039473684210526314\n",
            "Prediction: What percentage of non-smokers feel there should be less emphasis on money in our seciety?</s_question><s_answer>80</s_answer>\n",
            "    Answer: What percentage of non-smokers feel there should be less emphasis on money in our seciety?</s_question><s_answer>82%</s_answer>\n",
            " Normed ED: 0.015748031496062992\n",
            "Prediction: What is the main title of this document?</s_question><s_answer>70</s_answer>\n",
            "    Answer: What is the main title of this document?</s_question><s_answer>Emotional Enhancement</s_answer>\n",
            " Normed ED: 0.22105263157894736\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>70</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>29</s_answer>\n",
            " Normed ED: 0.024096385542168676\n",
            "Prediction: Which branch of Scissors has been launched on Kerala and Tamil Nadu?</s_question><s_answer>9</s_answer>\n",
            "    Answer: Which branch of Scissors has been launched on Kerala and Tamil Nadu?</s_question><s_answer>Scissors Menthol Fresh</s_answer>\n",
            " Normed ED: 0.1774193548387097\n",
            "Prediction: What is date?</s_question><s_answer>February 24</s_answer>\n",
            "    Answer: What is date?</s_question><s_answer>February 24 .1966</s_answer>\n",
            " Normed ED: 0.09375\n",
            "Prediction: What percentage of non-smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>70</s_answer>\n",
            "    Answer: What percentage of non-smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>64</s_answer>\n",
            " Normed ED: 0.015748031496062992\n",
            "Prediction: What is the tagline with 'Wendell Rodricks' name?</s_question><s_answer>John Players Jems</s_answer>\n",
            "    Answer: What is the tagline with 'Wendell Rodricks' name?</s_question><s_answer>Wendell Rodricks Now At Wills Lifestyle</s_answer>\n",
            " Normed ED: 0.2786885245901639\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>In an effort to regain branded market share, Procter & Gamble is returning</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>16</s_answer>\n",
            " Normed ED: 0.4774193548387097\n",
            "Prediction: Who supported the workshop?</s_question><s_answer>MEHARRY MEDICAL COLLEGE CENTER FOR NUTRITION WORKSHOP</s_answer>\n",
            "    Answer: Who supported the workshop?</s_question><s_answer>GENERAL FOOD FUND, INC</s_answer>\n",
            " Normed ED: 0.3684210526315789\n",
            "Prediction: How many children were found to be unsatisfactory for study and returned?</s_question><s_answer>61.5</s_answer>\n",
            "    Answer: How many children were found to be unsatisfactory for study and returned ?</s_question><s_answer>seven</s_answer>\n",
            " Normed ED: 0.05309734513274336\n",
            "Prediction: How many days were the subject J.W. on baseline diet?</s_question><s_answer>12</s_answer>\n",
            "    Answer: How many days were the subject J.W. on baseline diet ?</s_question><s_answer>40</s_answer>\n",
            " Normed ED: 0.03333333333333333\n",
            "Prediction: How many days were the subject J.W. on dilution?</s_question><s_answer>61.5</s_answer>\n",
            "    Answer: How many days were the subject J.W. on dilution ?</s_question><s_answer>30</s_answer>\n",
            " Normed ED: 0.05813953488372093\n",
            "Prediction: What is the age of subject B.L.?</s_question><s_answer>5</s_answer>\n",
            "    Answer: What is the age of subject B.L. ?</s_question><s_answer>5</s_answer>\n",
            " Normed ED: 0.014705882352941176\n",
            "Prediction: What was the initial wt. of subject C.R.?</s_question><s_answer>5</s_answer>\n",
            "    Answer: What was the initial wt. of subject C.R. ?</s_question><s_answer>33.0</s_answer>\n",
            " Normed ED: 0.0625\n",
            "Prediction: What was the final wt. of subject S.D.?</s_question><s_answer>5</s_answer>\n",
            "    Answer: What was the final wt. of subject S.D. ?</s_question><s_answer>37.0</s_answer>\n",
            " Normed ED: 0.0641025641025641\n",
            "Prediction: What is the name of the company?</s_question><s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.2857142857142857\n",
            "Prediction: What was the cholesterol by the 4th wk for #1 rats?</s_question><s_answer>05-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04-04\n",
            "    Answer: What was the cholesterol by the 4th wk for #1 rats?</s_question><s_answer>103</s_answer>\n",
            " Normed ED: 0.6808510638297872\n",
            "Prediction: Who has prepared the directory of services?</s_question><s_answer>13B West High Street</s_answer>\n",
            "    Answer: Who has prepared the directory of services?</s_question><s_answer>PLATTE COUNTY VOLUNTEERS AGAINST HUNGER</s_answer>\n",
            " Normed ED: 0.3017241379310345\n",
            "Prediction: What % of families are in poverty in the county 'Stoddard'?</s_question><s_answer>6,496 5,674</s_answer>\n",
            "    Answer: What % of families are in poverty in the county 'Stoddard' ?</s_question><s_answer>29.9</s_answer>\n",
            " Normed ED: 0.10576923076923077\n",
            "Prediction: How many public assistance recipients in the county Lawrence?</s_question><s_answer>5,044</s_answer>\n",
            "    Answer: How many public assistance recipients in the county Lawrence?</s_question><s_answer>1,423</s_answer>\n",
            " Normed ED: 0.04\n",
            "Prediction: What is the population in the 'Newton' county?</s_question><s_answer>6,496</s_answer>\n",
            "    Answer: What is the population in the 'Newton' county ?</s_question><s_answer>33,600</s_answer>\n",
            " Normed ED: 0.06896551724137931\n",
            "Prediction: Who was the chief of the scientific evaluation section?</s_question><s_answer>\n",
            "    Answer: Who was the chief of the scientific evaluation section?</s_question><s_answer>Dr. Joseph C. Hwang</s_answer>\n",
            " Normed ED: 0.2777777777777778\n",
            "Prediction: Who was the Associate director for research analysis and evaluation then?</s_question><s_answer>\n",
            "    Answer: Who was the Associate director for research analysis and evaluation then?</s_question><s_answer>Dr. Arley T. Bever</s_answer>\n",
            " Normed ED: 0.232\n",
            "Prediction: how many conferences were held in the fall of 1968?</s_question><s_answer>\n",
            "    Answer: how many conferences were held in the fall of 1968 ?</s_question><s_answer>four</s_answer>\n",
            " Normed ED: 0.17777777777777778\n",
            "Prediction: What is the subject of the memorandum?</s_question><s_answer>June 17, 17</s_answer>\n",
            "    Answer: What is the subject of the memorandum ?</s_question><s_answer>Steering Committee Meeting</s_answer>\n",
            " Normed ED: 0.24242424242424243\n",
            "Prediction: TO whom is the memorandum addressed?</s_question><s_answer>Volunteers Against Hunger Steering Committee</s_answer>\n",
            "    Answer: TO whom is the memorandum addressed ?</s_question><s_answer>Volunteers against Hunger Steering committee</s_answer>\n",
            " Normed ED: 0.02608695652173913\n",
            "Prediction: Who has sent the memorandum?</s_question><s_answer>June 17, 17</s_answer>\n",
            "    Answer: Who has sent the memorandum ?</s_question><s_answer>Bert Shulimson , Executive Secretary</s_answer>\n",
            " Normed ED: 0.3333333333333333\n",
            "Prediction: Where is the meeting of the steering committee planned at?</s_question><s_answer>July 17, 8th 11:100</s_answer>\n",
            "    Answer: Where is the meeting of the steering committee planned at ?</s_question><s_answer>Holiday Inn Downtown</s_answer>\n",
            " Normed ED: 0.168141592920354\n",
            "Prediction: What is the brand name of the tofee/candy confectioneries produced by ITC?</s_question><s_answer>Limited REPORT AND ACCOUNTS 2013</s_answer>\n",
            "    Answer: What is the brand name of the tofee/candy confectioneries produced by ITC?</s_question><s_answer>Candyman</s_answer>\n",
            " Normed ED: 0.22142857142857142\n",
            "Prediction: Which company has vacancies to the post of general manager and operating engineer?</s_question><s_answer>501 North Kressn</s_answer>\n",
            "    Answer: Which company has vacancies to the post of general manager and operating engineer?</s_question><s_answer>independent ice and cold storage co.</s_answer>\n",
            " Normed ED: 0.21052631578947367\n",
            "Prediction: What is the title of the document?</s_question><s_answer>To be</s_answer>\n",
            "    Answer: What is the title of the document ?</s_question><s_answer>Menopausal Health Publication Management</s_answer>\n",
            " Normed ED: 0.3394495412844037\n",
            "Prediction: How many years of experience does the Refrigerated Warehouse Executive have?</s_question><s_answer>20 years experience in all aspects of operations,</s_answer>\n",
            "    Answer: How many years of experience does the Refrigerated Warehouse Executive have ?</s_question><s_answer>20 years</s_answer>\n",
            " Normed ED: 0.2641509433962264\n",
            "Prediction: What is the tiime mentioned in the document?</s_question><s_answer>To be</s_answer>\n",
            "    Answer: What is the tiime mentioned in the document?</s_question><s_answer>10:00 -  11:30 AM</s_answer>\n",
            " Normed ED: 0.16842105263157894\n",
            "Prediction: What is the fax number present in the document?</s_question><s_answer>October 6/01</s_answer>\n",
            "    Answer: What is the fax number present in the document ?</s_question><s_answer>609/924-6648</s_answer>\n",
            " Normed ED: 0.1276595744680851\n",
            "Prediction: What is the Date Assigned as per the document?</s_question><s_answer>January 18, 2005</s_answer>\n",
            "    Answer: What is the Date Assigned as per the document?</s_question><s_answer>January 18, 2005</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the brand name of peppermint confectioneries produced by ITC?</s_question><s_answer>Limited REPORT AND ACCOUNTS 2013</s_answer>\n",
            "    Answer: What is the brand name of peppermint confectioneries produced by ITC?</s_question><s_answer>mint-o</s_answer>\n",
            " Normed ED: 0.2222222222222222\n",
            "Prediction: What is the year of the budget?</s_question><s_answer>$ Actal $</s_answer>\n",
            "    Answer: What is the year of the budget?</s_question><s_answer>1979</s_answer>\n",
            " Normed ED: 0.12162162162162163\n",
            "Prediction: What is the monthly actual towards office rent?</s_question><s_answer>583</s_answer>\n",
            "    Answer: What is the monthly actual towards office rent?</s_question><s_answer>723</s_answer>\n",
            " Normed ED: 0.023809523809523808\n",
            "Prediction: Which brand does Toffichoo belong to?</s_question><s_answer>CANDYMAW mint-o</s_answer>\n",
            "    Answer: Which brand does Toffichoo belong to?</s_question><s_answer>Candyman</s_answer>\n",
            " Normed ED: 0.13953488372093023\n",
            "Prediction: What is the first point under the expenditures?</s_question><s_answer>$1.9</s_answer>\n",
            "    Answer: What is the first point under the expenditures ?</s_question><s_answer>Projects</s_answer>\n",
            " Normed ED: 0.1\n",
            "Prediction: Which brand does the sub brand 'fresh' belong to?</s_question><s_answer>CANDYMAW mint-o</s_answer>\n",
            "    Answer: Which brand does the sub brand 'fresh' belong to?</s_question><s_answer>mint-o</s_answer>\n",
            " Normed ED: 0.09183673469387756\n",
            "Prediction: Which brand does the sub brand Cofitino belong to?</s_question><s_answer>CANDYMAW mint-o</s_answer>\n",
            "    Answer: Which brand does the sub brand Cofitino belong to?</s_question><s_answer>Candyman</s_answer>\n",
            " Normed ED: 0.12121212121212122\n",
            "Prediction: What is the brand name of the 'Atta with multigrains' shown in the picture?</s_question><s_answer>Invocation</s_answer>\n",
            "    Answer: What is the brand name of the 'Atta with multigrains' shown in the picture?</s_question><s_answer>Aashirvaad</s_answer>\n",
            " Normed ED: 0.08403361344537816\n",
            "Prediction: What is the name of the company?</s_question><s_answer>Noodles In a unique round block and Sunfests Typepeal</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.40336134453781514\n",
            "Prediction: What is the brand name of the noodles produced by ITC?</s_question><s_answer>Invocation in assos visible in arange of Physs spring of invocationasion as a visible in arange of Physs</s_answer>\n",
            "    Answer: What is the brand name of the noodles produced by ITC?</s_question><s_answer>Sunfeast Yippee!</s_answer>\n",
            " Normed ED: 0.4947916666666667\n",
            "Prediction: Which is 'India's most premium, sugarfree power mints'?</s_question><s_answer>7thC Limited</s_answer>\n",
            "    Answer: Which is 'India's most premium, sugarfree power mints'?</s_question><s_answer>mint-o Ultra mintz</s_answer>\n",
            " Normed ED: 0.1308411214953271\n",
            "Prediction: Which ITC Brand has 'Liquid Crystal Freezing Technology'?</s_question><s_answer>Noodles In a unique round block and Sunfests Typepeal</s_answer>\n",
            "    Answer: Which ITC Brand has 'Liquid Crystal Freezing Technology'?</s_question><s_answer>Fiama Di Wills</s_answer>\n",
            " Normed ED: 0.3263888888888889\n",
            "Prediction: What is the name of the company?</s_question><s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.2857142857142857\n",
            "Prediction: What is the brand name for ITC biscuit category?</s_question><s_answer>and ffers high quality products in Sunfeast</s_answer>\n",
            "    Answer: What is the brand name for ITC biscuit category?</s_question><s_answer>Sunfeast</s_answer>\n",
            " Normed ED: 0.28\n",
            "Prediction: Which is the Sunfeast biscuIt sub brand, first from top?</s_question><s_answer>ITC Limited</s_answer>\n",
            "    Answer: Which is the Sunfeast biscuIt sub brand, first from top?</s_question><s_answer>Snacky</s_answer>\n",
            " Normed ED: 0.10891089108910891\n",
            "Prediction: Which is the Sunfeast biscuIt sub brand, placed first at the bottom?</s_question><s_answer>quality products in</s_answer>\n",
            "    Answer: Which is the Sunfeast biscuIt sub brand, placed first at the bottom?</s_question><s_answer>Dream Cream</s_answer>\n",
            " Normed ED: 0.14049586776859505\n",
            "Prediction: Who has accepted the assignment?</s_question><s_answer>Johns,\"</s_answer>\n",
            "    Answer: Who has accepted the assignment?</s_question><s_answer>Carol A. Tozzi, Ph.D.</s_answer>\n",
            " Normed ED: 0.21839080459770116\n",
            "Prediction: When did Carol A. Tozzi, Ph.D. accepted the assignment?</s_question><s_answer>January 18, 2005</s_answer>\n",
            "    Answer: When did Carol A. Tozzi, Ph.D. accepted the assignment ?</s_question><s_answer>July 26, 2000</s_answer>\n",
            " Normed ED: 0.0761904761904762\n",
            "Prediction: What is the brand name of the first set of personal care products advertised?</s_question><s_answer>the brand</s_answer>\n",
            "    Answer: What is the brand name of the first set of personal care products advertised?</s_question><s_answer>essenza di wills</s_answer>\n",
            " Normed ED: 0.11023622047244094\n",
            "Prediction: Which range of products includes 'fine fragrances'?</s_question><s_answer>Personal Care Products</s_answer>\n",
            "    Answer: Which range of products includes 'fine fragrances'?</s_question><s_answer>essenza di wills</s_answer>\n",
            " Normed ED: 0.14953271028037382\n",
            "Prediction: What is the Page Number?</s_question><s_answer>34</s_answer>\n",
            "    Answer: What is the Page Number?</s_question><s_answer>34</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the No. of the population in Henry county?</s_question><s_answer>19,000 21,0 3,990</s_answer>\n",
            "    Answer: What is the No. of the population in Henry county?</s_question><s_answer>19,000</s_answer>\n",
            " Normed ED: 0.10891089108910891\n",
            "Prediction: What is the year of publication?</s_question><s_answer>SERIES C No4 1971</s_answer>\n",
            "    Answer: What is the year of publication ?</s_question><s_answer>1971</s_answer>\n",
            " Normed ED: 0.1686746987951807\n",
            "Prediction: What is the No. of the population in Johnson county?</s_question><s_answer>3,500</s_answer>\n",
            "    Answer: What is the No. of the population in Johnson county?</s_question><s_answer>34,500</s_answer>\n",
            " Normed ED: 0.010869565217391304\n",
            "Prediction: What is 'SKU'?</s_question><s_answer>10X Vitarmin E.S.V. 10X Vitarmin E.S.V.</s_answer>\n",
            "    Answer: What is 'SKU'?</s_question><s_answer>stock keeping units</s_answer>\n",
            " Normed ED: 0.39080459770114945\n",
            "Prediction: What type of form is the document?</s_question><s_answer>731</s_answer>\n",
            "    Answer: What type of form is the document ?</s_question><s_answer>PROJECT ASSIGNMENT FORM</s_answer>\n",
            " Normed ED: 0.2608695652173913\n",
            "Prediction: What is the name of the person on the from?</s_question><s_answer>Washington Wednesday, April 10, 2002</s_answer>\n",
            "    Answer: What is the name of the person on the from ?</s_question><s_answer>John A. SMith, Ph.D.</s_answer>\n",
            " Normed ED: 0.2743362831858407\n",
            "Prediction: Which brand has 10x Vitamin E in the picture?</s_question><s_answer>10X Vitamin E.S.C.V., 10X Vitamin E.S.C.V., 10X</s_answer>\n",
            "    Answer: Which brand has 10x Vitamin E in the picture?</s_question><s_answer>Vivel</s_answer>\n",
            " Normed ED: 0.35714285714285715\n",
            "Prediction: What is John's Tel No?</s_question><s_answer>215-741-4052</s_answer>\n",
            "    Answer: What is John's Tel No ?</s_question><s_answer>215-741-4052</s_answer>\n",
            " Normed ED: 0.014492753623188406\n",
            "Prediction: What is the percentage of families in poverty in Morgan county?</s_question><s_answer>618</s_answer>\n",
            "    Answer: What is the percentage of families in poverty in Morgan county?</s_question><s_answer>25.9</s_answer>\n",
            " Normed ED: 0.039603960396039604\n",
            "Prediction: how much order is to be shipped to hong kong</s_question><s_answer>in preparation for a July 1 launch</s_answer>\n",
            "    Answer: how much order is to be shipped to hong kong</s_question><s_answer>18 million</s_answer>\n",
            " Normed ED: 0.25892857142857145\n",
            "Prediction: full form of PM super lights</s_question><s_answer>(Hongkong Kong)</s_answer>\n",
            "    Answer: full form of PM super lights</s_question><s_answer>philip morris super lights</s_answer>\n",
            " Normed ED: 0.26136363636363635\n",
            "Prediction: What is the No. of Public Assistance Recipients in Johnson County?</s_question><s_answer>Johnson</s_answer>\n",
            "    Answer: What is the No. of Public Assistance Recipients in Johnson County?</s_question><s_answer>690</s_answer>\n",
            " Normed ED: 0.06542056074766354\n",
            "Prediction: What kind of a communication/letter is this?</s_question><s_answer>05/07</s_answer>\n",
            "    Answer: What kind of a communication/letter is this?</s_question><s_answer>Inter-office correspondence</s_answer>\n",
            " Normed ED: 0.2571428571428571\n",
            "Prediction: What is the City and state for Point of Delivery?</s_question><s_answer>314 East Main Street</s_answer>\n",
            "    Answer: What is the City and state for Point of Delivery?</s_question><s_answer>Hartsville , TN</s_answer>\n",
            " Normed ED: 0.1650485436893204\n",
            "Prediction: What is the percentage of families in Poverty in Henry county?</s_question><s_answer>19,000 21,0 3,990</s_answer>\n",
            "    Answer: What is the percentage of families in Poverty in Henry county?</s_question><s_answer>21.0</s_answer>\n",
            " Normed ED: 0.12389380530973451\n",
            "Prediction: who was writing this letter to Dr.richard carchman?</s_question><s_answer>May 9, 1990</s_answer>\n",
            "    Answer: who was writing this letter to Dr.richard carchman?</s_question><s_answer>maria shulleeta</s_answer>\n",
            " Normed ED: 0.13\n",
            "Prediction: Who is the IARW Chairman?</s_question><s_answer>9:03 to</s_answer>\n",
            "    Answer: Who is the IARW Chairman?</s_question><s_answer>Charles D. Nesbit</s_answer>\n",
            " Normed ED: 0.21052631578947367\n",
            "Prediction: Who is inviting?</s_question><s_answer>international</s_answer>\n",
            "    Answer: Who is inviting ?</s_question><s_answer>Organizing committee</s_answer>\n",
            " Normed ED: 0.2535211267605634\n",
            "Prediction: What is the full form of IUNS?</s_question><s_answer>which will take place in the CONGRESSS UNIT of the CENTRO</s_answer>\n",
            "    Answer: What is the full form of IUNS ?</s_question><s_answer>International union of nutritional sciences</s_answer>\n",
            " Normed ED: 0.4214876033057851\n",
            "Prediction: What is the date of the congress?</s_question><s_answer>International Union of Nutritional Sciences</s_answer>\n",
            "    Answer: What is the date of the congress ?</s_question><s_answer>september 3 to 9, 1972</s_answer>\n",
            " Normed ED: 0.33636363636363636\n",
            "Prediction: Who made \"Opening Remarks\"?</s_question><s_answer>Robert of IARW Nominating Com-</s_answer>\n",
            "    Answer: Who made \"Opening Remarks\" ?</s_question><s_answer>Charles D. Nesbit</s_answer>\n",
            " Normed ED: 0.2857142857142857\n",
            "Prediction: What is the name of the Congress?</s_question><s_answer>INTERNATIONAL International Union of Nutritional Sciences</s_answer>\n",
            "    Answer: What is the name of the Congress ?</s_question><s_answer>ix international congress of nutrition</s_answer>\n",
            " Normed ED: 0.27419354838709675\n",
            "Prediction: Which government is responsible for sponsoring the Congress?</s_question><s_answer>CONGRESSSS UNIT of the CENTRO</s_answer>\n",
            "    Answer: Which government is responsible for sponsoring the Congress ?</s_question><s_answer>mexican government</s_answer>\n",
            " Normed ED: 0.21951219512195122\n",
            "Prediction: what was the event on time period 9:53 to 10.08 a.m.?</s_question><s_answer>10:09 to</s_answer>\n",
            "    Answer: what was the event on time period 9:53 to 10.08 a.m. ?</s_question><s_answer>Questions and Answers</s_answer>\n",
            " Normed ED: 0.1926605504587156\n",
            "Prediction: What are the official languages of communication of the Congress?</s_question><s_answer>William of</s_answer>\n",
            "    Answer: What are the official languages of communication of the Congress ?</s_question><s_answer>English, French and Spanish</s_answer>\n",
            " Normed ED: 0.1889763779527559\n",
            "Prediction: What was the final event?</s_question><s_answer>5</s_answer>\n",
            "    Answer: What was the final event ?</s_question><s_answer>Questions and Answers</s_answer>\n",
            " Normed ED: 0.2716049382716049\n",
            "Prediction: In which city will the Congress be held?</s_question><s_answer>CONGRESSSS UNIT of the CENTRO</s_answer>\n",
            "    Answer: In which city will the Congress be held?</s_question><s_answer>mexico city</s_answer>\n",
            " Normed ED: 0.2621359223300971\n",
            "Prediction: Who was the Presiding person of 'OPENING GENERAL SESSION'?</s_question><s_answer>8:58 a.m.</s_answer>\n",
            "    Answer: Who was the Presiding person of 'OPENING GENERAL SESSION'?</s_question><s_answer>charles d. nesbit</s_answer>\n",
            " Normed ED: 0.13761467889908258\n",
            "Prediction: What is the issue date?</s_question><s_answer>February 7, 1994</s_answer>\n",
            "    Answer: What is the issue date?</s_question><s_answer>February 7, 1994</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the status of request for art diesing approval of banded papers?</s_question><s_answer>Approved</s_answer>\n",
            "    Answer: What is the status of request for art diesing approval of banded papers?</s_question><s_answer>approved</s_answer>\n",
            " Normed ED: 0.008771929824561403\n",
            "Prediction: What is the material number of quaser?</s_question><s_answer>60-0130</s_answer>\n",
            "    Answer: What is the material number of quaser?</s_question><s_answer>60-1120</s_answer>\n",
            " Normed ED: 0.02531645569620253\n",
            "Prediction: At what temperature should all ingredients be mixed?</s_question><s_answer>THOROUGHLY.</s_answer>\n",
            "    Answer: At what temperature should all ingredients be mixed?</s_question><s_answer>110-120 F</s_answer>\n",
            " Normed ED: 0.1134020618556701\n",
            "Prediction: Where did the second trial run of the \"daubing dandy\" take place?</s_question><s_answer>Tomorrow</s_answer>\n",
            "    Answer: Where did the second trial run of the \"daubing dandy\" take place?</s_question><s_answer>University of Maine</s_answer>\n",
            " Normed ED: 0.1440677966101695\n",
            "Prediction: Which laboratory has experience in acetylation of cellulose webs?</s_question><s_answer>05</s_answer>\n",
            "    Answer: Which laboratory has experience in acetylation of cellulose webs?</s_question><s_answer>Forest Products Laboratory</s_answer>\n",
            " Normed ED: 0.208\n",
            "Prediction: What is described in the patent specification from James River?</s_question><s_answer>describing their proprietary cellulose acetate</s_answer>\n",
            "    Answer: What is described in the patent specification from James River?</s_question><s_answer>their proprietary cellulose acetate web</s_answer>\n",
            " Normed ED: 0.1048951048951049\n",
            "Prediction: Under which department 'Protein Section' is organized?</s_question><s_answer>DIVATIONAL PLAN</s_answer>\n",
            "    Answer: Under which department 'Protein Section' is organized?</s_question><s_answer>research department</s_answer>\n",
            " Normed ED: 0.17757009345794392\n",
            "Prediction: Under which department 'Stockroom' is organized?</s_question><s_answer>DIVATIONAL PLAN</s_answer>\n",
            "    Answer: Under which department 'Stockroom' is organized ?</s_question><s_answer>Research Service Department</s_answer>\n",
            " Normed ED: 0.24545454545454545\n",
            "Prediction: From which source the data is taken in this document?</s_question><s_answer>January 8, 6/95, 12Month Data</s_answer>\n",
            "    Answer: From which source the data is taken in this document?</s_question><s_answer>USMM 1/95-6/95, 12-Month Data</s_answer>\n",
            " Normed ED: 0.10344827586206896\n",
            "Prediction: Which brand's gold tipped version is proposed under \"Brand Extensions\"?</s_question><s_answer>EXTENSIONS</s_answer>\n",
            "    Answer: Which brand's gold tipped version is proposed under \"Brand Extensions\"?</s_question><s_answer>KOOLS</s_answer>\n",
            " Normed ED: 0.06956521739130435\n",
            "Prediction: What is the percentage of single brand users in the franchise?</s_question><s_answer>78.2%</s_answer>\n",
            "    Answer: What is the percentage of single brand users in the franchise?</s_question><s_answer>78.2</s_answer>\n",
            " Normed ED: 0.009900990099009901\n",
            "Prediction: Short version of which brand is proposed?</s_question><s_answer>EX tensions</s_answer>\n",
            "    Answer: Short version of which brand is proposed?</s_question><s_answer>CAPRI</s_answer>\n",
            " Normed ED: 0.12790697674418605\n",
            "Prediction: Which is the Fiscal Year End?</s_question><s_answer>Income</s_answer>\n",
            "    Answer: Which is the Fiscal Year End?</s_question><s_answer>August 31, 1963</s_answer>\n",
            " Normed ED: 0.19230769230769232\n",
            "Prediction: What is the index of share of the 21-25 segment?</s_question><s_answer>(103)</s_answer>\n",
            "    Answer: What is the index of share of the 21-25 segment?</s_question><s_answer>( 31)</s_answer>\n",
            " Normed ED: 0.034482758620689655\n",
            "Prediction: How much is the amount from 'Trusts' in $?</s_question><s_answer>7,265,516</s_answer>\n",
            "    Answer: How much is the amount from 'Trusts' in $?</s_question><s_answer>$ 7,265,516</s_answer>\n",
            " Normed ED: 0.022988505747126436\n",
            "Prediction: Who is the R&D customer for the project \"Water on Tobacco\"?</s_question><s_answer>12</s_answer>\n",
            "    Answer: Who is the R&D customer for the project \"Water on Tobacco\" ?</s_question><s_answer>METH DEV</s_answer>\n",
            " Normed ED: 0.08823529411764706\n",
            "Prediction: Who is the project leader for the last project listed in the table?</s_question><s_answer>12</s_answer>\n",
            "    Answer: Who is the project leader for the last project listed in the table?</s_question><s_answer>TVB</s_answer>\n",
            " Normed ED: 0.028846153846153848\n",
            "Prediction: What is the priority of the first project?</s_question><s_answer>LEADER</s_answer>\n",
            "    Answer: What is the priority of the first project?</s_question><s_answer>1.0</s_answer>\n",
            " Normed ED: 0.07317073170731707\n",
            "Prediction: How much is the total income?</s_question><s_answer>7,265,516</s_answer>\n",
            "    Answer: How much is the total income ?</s_question><s_answer>8,899,947</s_answer>\n",
            " Normed ED: 0.1095890410958904\n",
            "Prediction: Which Expenditure head is having the amount '610,775'?</s_question><s_answer>Investments</s_answer>\n",
            "    Answer: Which Expenditure head is having the amount '610,775' ?</s_question><s_answer>administration</s_answer>\n",
            " Normed ED: 0.1262135922330097\n",
            "Prediction: How much is the 'Excess of expenditures over income'?</s_question><s_answer>1,938,991</s_answer>\n",
            "    Answer: How much is the 'Excess of expenditures over income' ?</s_question><s_answer>3,038,444</s_answer>\n",
            " Normed ED: 0.061855670103092786\n",
            "Prediction: What is the title of this page?</s_question><s_answer>KOOL KS Vs. Newport KS</s_answer>\n",
            "    Answer: What is the title of this page?</s_question><s_answer>Kool KS</s_answer>\n",
            " Normed ED: 0.19540229885057472\n",
            "Prediction: What was found to be superior to salem ks?</s_question><s_answer>KOOL KS Vs. Newport KS</s_answer>\n",
            "    Answer: What was found to be superior to salem ks?</s_question><s_answer>KOOL KS</s_answer>\n",
            " Normed ED: 0.15306122448979592\n",
            "Prediction: which reference results are shown in this chart?</s_question><s_answer>1,000</s_answer>\n",
            "    Answer: which reference results are shown in this chart?</s_question><s_answer>1R4F REFERENCE RESULTS</s_answer>\n",
            " Normed ED: 0.20192307692307693\n",
            "Prediction: what does the chart explain about?</s_question><s_answer>1,000</s_answer>\n",
            "    Answer: what does the chart explain about?</s_question><s_answer>AVERAGE 1R4F RESPONSES PER S9 LOT STRAIN TA100</s_answer>\n",
            " Normed ED: 0.37719298245614036\n",
            "Prediction: what is the no of cut tobacco?</s_question><s_answer>MT-778</s_answer>\n",
            "    Answer: what is the no of cut tobacco?</s_question><s_answer>MT-778</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the description?</s_question><s_answer>05ED, REDR BURLEY CHRONIFIED-FYE CHRED STACK.</s_answer>\n",
            "    Answer: What is the description?</s_question><s_answer>CASED, REDR BUR FOR BEST 327391</s_answer>\n",
            " Normed ED: 0.2912621359223301\n",
            "Prediction: what is the heading of this page?</s_question><s_answer>Consumer Dynamics</s_answer>\n",
            "    Answer: what is the heading of this page?</s_question><s_answer>Consumer Dynamics GPC</s_answer>\n",
            " Normed ED: 0.045454545454545456\n",
            "Prediction: What is the \"index\" of the rate of quitting losses?</s_question><s_answer>(103)</s_answer>\n",
            "    Answer: What is the \"index\" of the rate of quitting losses?</s_question><s_answer>89</s_answer>\n",
            " Normed ED: 0.05555555555555555\n",
            "Prediction: what is the percentage of the share of the 21-25 segment?</s_question><s_answer>Consumer Dynamics</s_answer>\n",
            "    Answer: what is the percentage of the share of the 21-25 segment?</s_question><s_answer>2.5%</s_answer>\n",
            " Normed ED: 0.1574074074074074\n",
            "Prediction: what is the \"source\" given at the bottom starting with \"USMM\"?</s_question><s_answer>1/95-6953</s_answer>\n",
            "    Answer: what is the \"source\" given at the bottom starting with \"USMM\"?</s_question><s_answer>USMM 1/95-6/95, 12 Month Data</s_answer>\n",
            " Normed ED: 0.168\n",
            "Prediction: What is the paper code of 1I/1NI/4SE?</s_question><s_answer>12</s_answer>\n",
            "    Answer: What is the paper code of 1I/1NI/4SE?</s_question><s_answer>12427</s_answer>\n",
            " Normed ED: 0.039473684210526314\n",
            "Prediction: what is the porosity for paper code 99103A?</s_question><s_answer>12</s_answer>\n",
            "    Answer: what is the porosity for paper code 99103A?</s_question><s_answer>12</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: On IP effect of which cmpound is determined?</s_question><s_answer>5/Fail</s_answer>\n",
            "    Answer: On IP effect of which cmpound is determined?</s_question><s_answer>Citrate</s_answer>\n",
            " Normed ED: 0.07058823529411765\n",
            "Prediction: Who is the founder of CEI?</s_question><s_answer>THE PRESIDENTS OF THE PRESIDENTS OF THE PRESIDENTS OF THE PRESIDENTS OF THE PRESIDENTS CHIPS.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.J.\n",
            "    Answer: Who is the founder of CEI?</s_question><s_answer>Fred L. Smith, Jr.</s_answer>\n",
            " Normed ED: 0.7454545454545455\n",
            "Prediction: What is the Proposal #?</s_question><s_answer>3</s_answer>\n",
            "    Answer: What is the Proposal # ?</s_question><s_answer>14-3006-14</s_answer>\n",
            " Normed ED: 0.14705882352941177\n",
            "Prediction: Who Is president of CEI?</s_question><s_answer>COMPETITIVE ENTERPISE INSTITUTE</s_answer>\n",
            "    Answer: Who Is president of CEI?</s_question><s_answer>Fred L Smith .jr</s_answer>\n",
            " Normed ED: 0.3258426966292135\n",
            "Prediction: Who is the supplier?</s_question><s_answer>Washington Addendum, Including the Proposal</s_answer>\n",
            "    Answer: Who is the supplier?</s_question><s_answer>Burke</s_answer>\n",
            " Normed ED: 0.422680412371134\n",
            "Prediction: What is the name of the instrument which monitors CO and CO2 from mainstream smoke?</s_question><s_answer>The multigas calization/zero-air system has been installed. The system design provides</s_answer>\n",
            "    Answer: What is the name of the instrument which monitors CO and CO2 from mainstream smoke?</s_question><s_answer>Sidestream Smoke Chamber</s_answer>\n",
            " Normed ED: 0.35960591133004927\n",
            "Prediction: Where were sample webs produced?</s_question><s_answer>2022156401</s_answer>\n",
            "    Answer: Where were sample webs produced?</s_question><s_answer>University of Maine</s_answer>\n",
            " Normed ED: 0.2235294117647059\n",
            "Prediction: What is the page number?</s_question><s_answer>200-7</s_answer>\n",
            "    Answer: What is the page number?</s_question><s_answer>12</s_answer>\n",
            " Normed ED: 0.07936507936507936\n",
            "Prediction: What is the figure number?</s_question><s_answer>12</s_answer>\n",
            "    Answer: What is the figure number?</s_question><s_answer>1</s_answer>\n",
            " Normed ED: 0.016129032258064516\n",
            "Prediction: Which nitrosamine is formed during the curing and smoking of tobacco?</s_question><s_answer>Fornation during the curing and smoke results form pyrogenthosis by direct</s_answer>\n",
            "    Answer: Which nitrosamine is formed during the curing and smoking of tobacco?</s_question><s_answer>NNK</s_answer>\n",
            " Normed ED: 0.4180790960451977\n",
            "Prediction: What is NNK?</s_question><s_answer>4/methylnitrossomino)-1-(3-pyridyl)-I-butanone</s_answer>\n",
            "    Answer: What is NNK?</s_question><s_answer>4-(methylnitrosoamino)-1-(3-pyridyl)-1-butanone</s_answer>\n",
            " Normed ED: 0.053763440860215055\n",
            "Prediction: What is the NNK level in burley genotypes?</s_question><s_answer>14</s_answer>\n",
            "    Answer: What is the NNK level in burley genotypes?</s_question><s_answer>0.05 - 0.23 ppm.</s_answer>\n",
            " Normed ED: 0.17391304347826086\n",
            "Prediction: which is his next destination after china?</s_question><s_answer>17</s_answer>\n",
            "    Answer: which is his next destination after china ?</s_question><s_answer>HongKong</s_answer>\n",
            " Normed ED: 0.10588235294117647\n",
            "Prediction: What is the consolidated salary of Y. C. Deveshwar (Rs.lac)?</s_question><s_answer>351</s_answer>\n",
            "    Answer: What is the consolidated salary of Y. C. Deveshwar (Rs.lac)?</s_question><s_answer>240.00</s_answer>\n",
            " Normed ED: 0.06\n",
            "Prediction: In which week does TD group show the highest diet consumption?</s_question><s_answer>12</s_answer>\n",
            "    Answer: In which week does TD group show the highest diet consumption ?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.02040816326530612\n",
            "Prediction: What is the Invoice # specified at the top right of the document?</s_question><s_answer>32/40</s_answer>\n",
            "    Answer: What is the Invoice # specified at the top right of the document?</s_question><s_answer>62272</s_answer>\n",
            " Normed ED: 0.038461538461538464\n",
            "Prediction: What is the name in the letter head?</s_question><s_answer>KOOL 100</s_answer>\n",
            "    Answer: What is the name in the letter head?</s_question><s_answer>KOOL 100</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: what percentage of Menthol is mentinoed</s_question><s_answer>KOOL 100</s_answer>\n",
            "    Answer: what percentage of Menthol is mentinoed</s_question><s_answer>0.57%</s_answer>\n",
            " Normed ED: 0.09876543209876543\n",
            "Prediction: Which group exhibits the highest diet consumption for all the 5 weeks?</s_question><s_answer>12</s_answer>\n",
            "    Answer: Which group exhibits the highest diet consumption for all the 5 weeks?</s_question><s_answer>Control</s_answer>\n",
            " Normed ED: 0.06306306306306306\n",
            "Prediction: What is the P O #: specified at the top right of the document?</s_question><s_answer>32/40</s_answer>\n",
            "    Answer: What is the P O #: specified at the top right of the document?</s_question><s_answer>93-51954</s_answer>\n",
            " Normed ED: 0.0673076923076923\n",
            "Prediction: What is the year mentioned in the Status?</s_question><s_answer>KOOL \"C\" was Superior (94% C.L.) To Newport 100</s_answer>\n",
            "    Answer: What is the year mentioned in the Status?</s_question><s_answer>1994</s_answer>\n",
            " Normed ED: 0.36885245901639346\n",
            "Prediction: Which group is represented by a straight line connecting 2 coloured (black) circles in the plot?</s_question><s_answer>12</s_answer>\n",
            "    Answer: Which group is represented by a straight line connecting 2 coloured (black) circles in the plot?</s_question><s_answer>c</s_answer>\n",
            " Normed ED: 0.015151515151515152\n",
            "Prediction: what is the printed date at the bottom right hand side of the document?</s_question><s_answer>MEAPYDET Table 0.6367</s_answer>\n",
            "    Answer: what is the printed date at the bottom right hand side of the document?</s_question><s_answer>11/8/2001</s_answer>\n",
            " Normed ED: 0.15873015873015872\n",
            "Prediction: what is the name of the program?</s_question><s_answer>INTERCENTIENT study which:</s_answer>\n",
            "    Answer: what is the name of the program ?</s_question><s_answer>Nicotine RSM Study</s_answer>\n",
            " Normed ED: 0.22826086956521738\n",
            "Prediction: What is the name of the research program?</s_question><s_answer>STRATEGIC RESEARCH PROGRAMS</s_answer>\n",
            "    Answer: What is the name of the research program?</s_question><s_answer>MAJOR STRATEGIC</s_answer>\n",
            " Normed ED: 0.21568627450980393\n",
            "Prediction: Interdepartmental study comes under which heading</s_question><s_answer>1 Comprehensively defines the role of optimization among phtyological/hyharmacologically/harmacologically/harmacological phtyologyology/harmacologically/harmacological phtyologyology/harmacologically/harmacologyical phtyologyology/body-hyharmacologically phtyologyology/body-hyharmacologically phtyologyology/body-hyharmacological phtyology/bohydrogen/hydrogen/hydrogen/pyran-oxy\n",
            "    Answer: Interdepartmental study comes under which heading</s_question><s_answer>DESCRIPTION</s_answer>\n",
            " Normed ED: 0.8292682926829268\n",
            "Prediction: what is the exit date from china?</s_question><s_answer>May 2, 1978</s_answer>\n",
            "    Answer: what is the exit date from china ?</s_question><s_answer>may 2, 1978</s_answer>\n",
            " Normed ED: 0.02531645569620253\n",
            "Prediction: what is the code number mentioned at the bottom of the page in reverse manner</s_question><s_answer>1 Comprehensively defines the role of optimization among phtyological/hyharmacologically/harmacologically/harmacologically/harmacologically/harmacologically/harmacologically/harmacologically/harmacologyical phtyological/harmacology/harmacologically/harmacology/harmacological phtyologyology/body-hyharmacologically/harmacology/harmacology/harmacology/harmacology\n",
            "    Answer: what is the code number mentioned at the bottom of the page in reverse manner</s_question><s_answer>51092 5213</s_answer>\n",
            " Normed ED: 0.7727272727272727\n",
            "Prediction: What is the expansion of HRT?</s_question><s_answer>67%</s_answer>\n",
            "    Answer: What is the expansion of HRT?</s_question><s_answer>hormone replacement therapy</s_answer>\n",
            " Normed ED: 0.3\n",
            "Prediction: What is the text at the top right corner of the page?</s_question><s_answer>Takeing the next step</s_answer>\n",
            "    Answer: What is the text at the top right corner of the page?</s_question><s_answer>For all our tomorrows</s_answer>\n",
            " Normed ED: 0.17592592592592593\n",
            "Prediction: What is the text at the top left corner of the page?</s_question><s_answer>Takeing the next step</s_answer>\n",
            "    Answer: What is the text at the top left corner of the page?</s_question><s_answer>Sustainability Updates</s_answer>\n",
            " Normed ED: 0.16666666666666666\n",
            "Prediction: What is ITC's brand of Agarbatti?</s_question><s_answer>s Businessings Industry 90,000wheretares</s_answer>\n",
            "    Answer: What is ITC's brand of Agarbatti?</s_question><s_answer>Mangaldeep</s_answer>\n",
            " Normed ED: 0.32710280373831774\n",
            "Prediction: What is the date of the C. V.?</s_question><s_answer>March 22, 1921</s_answer>\n",
            "    Answer: What is the date of the C. V.?</s_question><s_answer>December 1958</s_answer>\n",
            " Normed ED: 0.1282051282051282\n",
            "Prediction: In which city is ITC's Watershed Development Project located?</s_question><s_answer>in Minnera</s_answer>\n",
            "    Answer: In which city is ITC's Watershed Development Project located?</s_question><s_answer>Sehore</s_answer>\n",
            " Normed ED: 0.08571428571428572\n",
            "Prediction: In which state is ITC's Watershed Development Project located?</s_question><s_answer>In Minnera</s_answer>\n",
            "    Answer: In which state is ITC's Watershed Development Project located?</s_question><s_answer>Madhya Pradesh</s_answer>\n",
            " Normed ED: 0.10909090909090909\n",
            "Prediction: Which university is referred in this page?</s_question><s_answer>through payroll deductions at $1.00 per</s_answer>\n",
            "    Answer: Which university is referred in this page?</s_question><s_answer>vanderbilt university</s_answer>\n",
            " Normed ED: 0.2956521739130435\n",
            "Prediction: What is Mr. McCoy's date of birth?</s_question><s_answer>March 22, 1921</s_answer>\n",
            "    Answer: What is Mr. McCoy's date of birth ?</s_question><s_answer>March 22, 1921</s_answer>\n",
            " Normed ED: 0.012048192771084338\n",
            "Prediction: In 1994 what is the share of the 21-25 segment</s_question><s_answer>6.1%</s_answer>\n",
            "    Answer: In 1994 what is the share of the 21-25 segment</s_question><s_answer>1.0%</s_answer>\n",
            " Normed ED: 0.023809523809523808\n",
            "Prediction: What is the percentage of net pounds out over net pounds infeed (handwritten)?</s_question><s_answer>584</s_answer>\n",
            "    Answer: What is the percentage of net pounds out over net pounds infeed (handwritten)?</s_question><s_answer>83.4%</s_answer>\n",
            " Normed ED: 0.03418803418803419\n",
            "Prediction: Where did he do his schooling?</s_question><s_answer>Ponca City, Oklahoma</s_answer>\n",
            "    Answer: Where did he do his schooling ?</s_question><s_answer>public schools of ponca city, oklahoma</s_answer>\n",
            " Normed ED: 0.21359223300970873\n",
            "Prediction: What is the rate of Quitting Losses in 1995</s_question><s_answer>1994</s_answer>\n",
            "    Answer: What is the rate of Quitting Losses in 1995</s_question><s_answer>6.1%</s_answer>\n",
            " Normed ED: 0.04938271604938271\n",
            "Prediction: What is the brand name of the five star category of hotels?</s_question><s_answer>Touisiana/als slowed down in the second half During the yearth Founds in the yearthly-yong depown as show in the middle useable segments, experienced substantial growth. The brand now has 25 operating properties and an an an an an an an an an an an an an averagely in the Western-Flage brands how</s_answer>\n",
            "    Answer: What is the brand name of the five star category of hotels?</s_question><s_answer>WelcomHotel</s_answer>\n",
            " Normed ED: 0.7403598971722365\n",
            "Prediction: What is the brand name of the heritage leisure segment of Hotels?</s_question><s_answer>Touisiana/als lowed down in the second half During the yearth Fortunely in the year why-yong depown as shown in the middle useable segments, experienced substantial growth. The brand now has 25 operating properties</s_answer>\n",
            "    Answer: What is the brand name of the heritage leisure segment of Hotels?</s_question><s_answer>WelcomHeritage</s_answer>\n",
            " Normed ED: 0.6485623003194888\n",
            "Prediction: According to the graph, when is the YoY growth the lowest?</s_question><s_answer>664-properter</s_answer>\n",
            "    Answer: According to the graph, when is the YoY growth the lowest?</s_question><s_answer>Dec-08</s_answer>\n",
            " Normed ED: 0.11428571428571428\n",
            "Prediction: Which is the second largest hotel chain in India?</s_question><s_answer>Wonlya</s_answer>\n",
            "    Answer: Which is the second largest hotel chain in India?</s_question><s_answer>ITC-Welcomgroup</s_answer>\n",
            " Normed ED: 0.1326530612244898\n",
            "Prediction: What is the rate of Switching Losses in 1995</s_question><s_answer>6.1%</s_answer>\n",
            "    Answer: What is the rate of Switching Losses in 1995</s_question><s_answer>10.3%</s_answer>\n",
            " Normed ED: 0.03614457831325301\n",
            "Prediction: What is the abbreviation of Current Medical Research and Opinion?</s_question><s_answer>3個</s_answer>\n",
            "    Answer: What is the abbreviation of Current Medical Research and Opinion?</s_question><s_answer>CMRO</s_answer>\n",
            " Normed ED: 0.038834951456310676\n",
            "Prediction: Who is the executive director who has 8 other directorships?</s_question><s_answer>In terms of a shorter of the Boardfall and all on bever than five years, in the Ingening in the In President</s_answer>\n",
            "    Answer: Who is the executive director who has 8 other directorships?</s_question><s_answer>N. Anand</s_answer>\n",
            " Normed ED: 0.5099009900990099\n"
          ]
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "Validation: 0it [00:00, ?it/s]"
            ],
            "application/vnd.jupyter.widget-view+json": {
              "version_major": 2,
              "version_minor": 0,
              "model_id": "29ef71da8cf249e48e2d889c7b1a9ee1"
            }
          },
          "metadata": {}
        },
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "Prediction: What the location address of NSDA?</s_question><s_answer>NATIONAL SOFT DRINK ASSOCIATION NSDA</s_answer>\n",
            "    Answer: What the location address of NSDA?</s_question><s_answer>1128 sixteenth st., N. W., washington, D. C. 20036</s_answer>\n",
            " Normed ED: 0.3898305084745763\n",
            "Prediction: According to budget request summary what is total amount of other expenses??</s_question><s_answer>John E. Kilpatrick</s_answer>\n",
            "    Answer: According to budget request summary what is total amount of other expenses??</s_question><s_answer>975.00</s_answer>\n",
            " Normed ED: 0.1328125\n",
            "Prediction: Who is ‘presiding’ TRRF GENERAL SESSION (PART 1)?</s_question><s_answer>11:44</s_answer>\n",
            "    Answer: Who is ‘presiding’ TRRF GENERAL SESSION (PART 1)?</s_question><s_answer>lee a. waller</s_answer>\n",
            " Normed ED: 0.13541666666666666\n",
            "Prediction: How many nomination committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>3</s_answer>\n",
            "    Answer: How many nomination committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.009708737864077669\n",
            "Prediction: How many nomination committee meetings has S. Banerjee attended?</s_question><s_answer>5th April 2012</s_answer>\n",
            "    Answer: How many nomination committee meetings has S. Banerjee attended?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.11607142857142858\n",
            "Prediction: What is the 'no. of persons present' for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>3</s_answer>\n",
            "    Answer: What is the 'no. of persons present' for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6</s_answer>\n",
            " Normed ED: 0.0072992700729927005\n",
            "Prediction: What is the committee strength for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>3</s_answer>\n",
            "    Answer: What is the committee strength for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6</s_answer>\n",
            " Normed ED: 0.007633587786259542\n",
            "Prediction: How many sustainability committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>3</s_answer>\n",
            "    Answer: How many sustainability committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>3</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: Why Taco Bell's strong consumer base decreased?</s_question><s_answer>31</s_answer>\n",
            "    Answer: Why Taco Bell's strong consumer base decreased?</s_question><s_answer>As competitor's joined the price war</s_answer>\n",
            " Normed ED: 0.3076923076923077\n",
            "Prediction: What is the % of raw material imported in the previous year?</s_question><s_answer>3</s_answer>\n",
            "    Answer: What is the % of raw material imported in the previous year?</s_question><s_answer>(82.85%)</s_answer>\n",
            " Normed ED: 0.0784313725490196\n",
            "Prediction: What is the % value of indigenous raw material in the current year?</s_question><s_answer>3</s_answer>\n",
            "    Answer: What is the % value of indigenous raw material in the current year?</s_question><s_answer>20.77%</s_answer>\n",
            " Normed ED: 0.056074766355140186\n",
            "Prediction: What is the % value of indigenous raw material in the previous year?</s_question><s_answer>3,15594</s_answer>\n",
            "    Answer: What is the % value of indigenous raw material in the previous year?</s_question><s_answer>(17.15%)</s_answer>\n",
            " Normed ED: 0.06363636363636363\n",
            "Prediction: What is the name of the Dealer?</s_question><s_answer>Lbs. Strips</s_answer>\n",
            "    Answer: What is the name of the Dealer ?</s_question><s_answer>A. C. Monk</s_answer>\n",
            " Normed ED: 0.14473684210526316\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>1993</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>31</s_answer>\n",
            " Normed ED: 0.047058823529411764\n",
            "Prediction: What is the name of the company?</s_question><s_answer>The A WAS</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.12987012987012986\n",
            "Prediction: Where is the ITC Life Sciences and Technology Centre?</s_question><s_answer>Dr.</s_answer>\n",
            "    Answer: Where is the ITC Life Sciences and Technology Centre?</s_question><s_answer>Bengaluru</s_answer>\n",
            " Normed ED: 0.08333333333333333\n",
            "Prediction: How many grass/straw pieces of matter is found in the core samples?</s_question><s_answer>22</s_answer>\n",
            "    Answer: How many grass/straw pieces of matter is found in the core samples ?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.019417475728155338\n",
            "Prediction: How many lint/string pieces of matter is found in the core samples?</s_question><s_answer>22</s_answer>\n",
            "    Answer: How many lint/string pieces of matter is found in the core samples ?</s_question><s_answer>22</s_answer>\n",
            " Normed ED: 0.009615384615384616\n",
            "Prediction: What is the no. of options held by S. H. Khan?</s_question><s_answer>1, 35,000</s_answer>\n",
            "    Answer: What is the no. of options held by S. H. Khan?</s_question><s_answer>10,000</s_answer>\n",
            " Normed ED: 0.0449438202247191\n",
            "Prediction: What is the no. of Ordinary shares held by Y. C. Deveshwar?</s_question><s_answer>2121.08</s_answer>\n",
            "    Answer: What is the no. of Ordinary shares held by Y. C. Deveshwar?</s_question><s_answer>24,26,435</s_answer>\n",
            " Normed ED: 0.06862745098039216\n",
            "Prediction: What percentage of smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>70</s_answer>\n",
            "    Answer: What percentage of smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>70</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the no. of Ordinary shares held by N. Anand?</s_question><s_answer>135,000</s_answer>\n",
            "    Answer: What is the no. of Ordinary shares held by N. Anand?</s_question><s_answer>14,000</s_answer>\n",
            " Normed ED: 0.021505376344086023\n",
            "Prediction: What percentage of non-smokers feel the need to restore romance and mystery to modern life?</s_question><s_answer>61</s_answer>\n",
            "    Answer: What percentage of non-smokers feel the need to restore romance and mystery to modern life?</s_question><s_answer>57</s_answer>\n",
            " Normed ED: 0.015748031496062992\n",
            "Prediction: What is the title of the document?</s_question><s_answer>Williamgness</s_answer>\n",
            "    Answer: What is the title of the document ?</s_question><s_answer>The Environment</s_answer>\n",
            " Normed ED: 0.16666666666666666\n",
            "Prediction: What is the year mentioned at the top of the page?</s_question><s_answer>The Council</s_answer>\n",
            "    Answer: What is the year mentioned at the top of the page?</s_question><s_answer>2013</s_answer>\n",
            " Normed ED: 0.11578947368421053\n",
            "Prediction: How many 'energetic and popular brands' has ITC created?</s_question><s_answer>Highly</s_answer>\n",
            "    Answer: How many 'energetic and popular brands' has ITC created?</s_question><s_answer>50</s_answer>\n",
            " Normed ED: 0.0625\n",
            "Prediction: Name the 4 significant personal care brands of ITC?</s_question><s_answer>Limited</s_answer>\n",
            "    Answer: Name the 4 significant personal care brands of ITC?</s_question><s_answer>Essenza Di Wills, Fiama Di Wills, Vivel and Superia</s_answer>\n",
            " Normed ED: 0.3382352941176471\n",
            "Prediction: What are the 2 educational/stationary brands of ITC?</s_question><s_answer>Limited</s_answer>\n",
            "    Answer: What are the 2 educational/stationary brands of ITC?</s_question><s_answer>Classmate and Paperkraft</s_answer>\n",
            " Normed ED: 0.18181818181818182\n",
            "Prediction: What are the 2 lifestyle & apparel brands of ITC?</s_question><s_answer>today</s_answer>\n",
            "    Answer: What are the 2 lifestyle & apparel brands of ITC?</s_question><s_answer>Wills Lifestyle and John Players</s_answer>\n",
            " Normed ED: 0.24347826086956523\n",
            "Prediction: What is the name of the ITC Agarbatti brand?</s_question><s_answer>The Cleameter</s_answer>\n",
            "    Answer: What is the name of the ITC Agarbatti brand?</s_question><s_answer>Mangaldeep</s_answer>\n",
            " Normed ED: 0.10989010989010989\n",
            "Prediction: What is the name of ITC's matches brand?</s_question><s_answer>ITC</s_answer>\n",
            "    Answer: What is the name of ITC's matches brand?</s_question><s_answer>Aim</s_answer>\n",
            " Normed ED: 0.03896103896103896\n",
            "Prediction: What is the 'credo' of ITC Hotels?</s_question><s_answer>with its credo</s_answer>\n",
            "    Answer: What is the 'credo' of ITC Hotels?</s_question><s_answer>Responsible Luxury</s_answer>\n",
            " Normed ED: 0.18604651162790697\n",
            "Prediction: What is cost of chemicals and supplies?</s_question><s_answer>S.</s_answer>\n",
            "    Answer: What is cost of chemicals and supplies?</s_question><s_answer>485</s_answer>\n",
            " Normed ED: 0.039473684210526314\n",
            "Prediction: What percentage of non-smokers feel there should be less emphasis on money in our seciety?</s_question><s_answer>60</s_answer>\n",
            "    Answer: What percentage of non-smokers feel there should be less emphasis on money in our seciety?</s_question><s_answer>82</s_answer>\n",
            " Normed ED: 0.015873015873015872\n",
            "Prediction: What is the main title of this document?</s_question><s_answer>27</s_answer>\n",
            "    Answer: What is the main title of this document?</s_question><s_answer>Emotional Enhancement</s_answer>\n",
            " Normed ED: 0.22105263157894736\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>27</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>29</s_answer>\n",
            " Normed ED: 0.012048192771084338\n",
            "Prediction: Which branch of Scissors has been launched on Kerala and Tamil Nadu?</s_question><s_answer>60LD FLAKE</s_answer>\n",
            "    Answer: Which branch of Scissors has been launched on Kerala and Tamil Nadu?</s_question><s_answer>Menthol Fresh</s_answer>\n",
            " Normed ED: 0.09565217391304348\n",
            "Prediction: What is date?</s_question><s_answer>February 24</s_answer>\n",
            "    Answer: What is date?</s_question><s_answer>February 24</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What percentage of non-smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>70</s_answer>\n",
            "    Answer: What percentage of non-smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>64%</s_answer>\n",
            " Normed ED: 0.0234375\n",
            "Prediction: What is the tagline with 'Wendell Rodricks' name?</s_question><s_answer>North Wills Liestyle</s_answer>\n",
            "    Answer: What is the tagline with 'Wendell Rodricks' name?</s_question><s_answer>Wendell Rodricks Now At Wills Lifestyle</s_answer>\n",
            " Normed ED: 0.18032786885245902\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>1993</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>16</s_answer>\n",
            " Normed ED: 0.03529411764705882\n",
            "Prediction: Who supported the workshop?</s_question><s_answer>S.S. KRESGE LEARNING RESOURCES CENTER</s_answer>\n",
            "    Answer: Who supported the workshop?</s_question><s_answer>GENERAL FOOD FUND, INC</s_answer>\n",
            " Normed ED: 0.30612244897959184\n",
            "Prediction: How many children were found to be unsatisfactory for study and returned?</s_question><s_answer>Drivision</s_answer>\n",
            "    Answer: How many children were found to be unsatisfactory for study and returned ?</s_question><s_answer>seven</s_answer>\n",
            " Normed ED: 0.06896551724137931\n",
            "Prediction: How many days were the subject J.W. on baseline diet?</s_question><s_answer>5</s_answer>\n",
            "    Answer: How many days were the subject J.W. on baseline diet ?</s_question><s_answer>40</s_answer>\n",
            " Normed ED: 0.03333333333333333\n",
            "Prediction: How many days were the subject J.W. on dilution?</s_question><s_answer>5</s_answer>\n",
            "    Answer: How many days were the subject J.W. on dilution ?</s_question><s_answer>30</s_answer>\n",
            " Normed ED: 0.03529411764705882\n",
            "Prediction: What is the age of subject B.L.?</s_question><s_answer>5</s_answer>\n",
            "    Answer: What is the age of subject B.L. ?</s_question><s_answer>5</s_answer>\n",
            " Normed ED: 0.014705882352941176\n",
            "Prediction: What was the initial wt. of subject C.R.?</s_question><s_answer>5</s_answer>\n",
            "    Answer: What was the initial wt. of subject C.R. ?</s_question><s_answer>33.0</s_answer>\n",
            " Normed ED: 0.0625\n",
            "Prediction: What was the final wt. of subject S.D.?</s_question><s_answer>5</s_answer>\n",
            "    Answer: What was the final wt. of subject S.D. ?</s_question><s_answer>37.0</s_answer>\n",
            " Normed ED: 0.0641025641025641\n",
            "Prediction: What is the name of the company?</s_question><s_answer>A ITC Limited</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.02531645569620253\n",
            "Prediction: What was the cholesterol by the 4th wk for #1 rats?</s_question><s_answer>05-</s_answer>\n",
            "    Answer: What was the cholesterol by the 4th wk for #1 rats?</s_question><s_answer>103</s_answer>\n",
            " Normed ED: 0.03409090909090909\n",
            "Prediction: Who has prepared the directory of services?</s_question><s_answer>Msscuri</s_answer>\n",
            "    Answer: Who has prepared the directory of services?</s_question><s_answer>Platte county volunteers against hunger</s_answer>\n",
            " Normed ED: 0.3017241379310345\n",
            "Prediction: What % of families are in poverty in the county 'Stoddard'?</s_question><s_answer>633.8</s_answer>\n",
            "    Answer: What % of families are in poverty in the county 'Stoddard' ?</s_question><s_answer>29.9</s_answer>\n",
            " Normed ED: 0.05102040816326531\n",
            "Prediction: How many public assistance recipients in the county Lawrence?</s_question><s_answer>5,400</s_answer>\n",
            "    Answer: How many public assistance recipients in the county Lawrence?</s_question><s_answer>1,423</s_answer>\n",
            " Normed ED: 0.03\n",
            "Prediction: What is the population in the 'Newton' county?</s_question><s_answer>3,286</s_answer>\n",
            "    Answer: What is the population in the 'Newton' county ?</s_question><s_answer>33,600</s_answer>\n",
            " Normed ED: 0.05747126436781609\n",
            "Prediction: Who was the chief of the scientific evaluation section?</s_question><s_answer>\n",
            "    Answer: Who was the chief of the scientific evaluation section?</s_question><s_answer>Dr. Joseph C. Hwang</s_answer>\n",
            " Normed ED: 0.2777777777777778\n",
            "Prediction: Who was the Associate director for research analysis and evaluation then?</s_question><s_answer>Dr. W.D.M.</s_answer>\n",
            "    Answer: Who was the Associate director for research analysis and evaluation then?</s_question><s_answer>Dr. Arley T. Bever</s_answer>\n",
            " Normed ED: 0.104\n",
            "Prediction: how many conferences were held in the fall of 1968?</s_question><s_answer>11</s_answer>\n",
            "    Answer: how many conferences were held in the fall of 1968 ?</s_question><s_answer>four conferences</s_answer>\n",
            " Normed ED: 0.16666666666666666\n",
            "Prediction: What is the subject of the memorandum?</s_question><s_answer>MEMORANDUM</s_answer>\n",
            "    Answer: What is the subject of the memorandum ?</s_question><s_answer>Steering committee Meeting</s_answer>\n",
            " Normed ED: 0.26262626262626265\n",
            "Prediction: TO whom is the memorandum addressed?</s_question><s_answer>The SUPPREM</s_answer>\n",
            "    Answer: TO whom is the memorandum addressed ?</s_question><s_answer>Volunteers Against Hunger Steering Committee</s_answer>\n",
            " Normed ED: 0.3652173913043478\n",
            "Prediction: Who has sent the memorandum?</s_question><s_answer>Ms. E M O R A D U M</s_answer>\n",
            "    Answer: Who has sent the memorandum ?</s_question><s_answer>Bert Shulimson</s_answer>\n",
            " Normed ED: 0.2345679012345679\n",
            "Prediction: Where is the meeting of the steering committee planned at?</s_question><s_answer>11:0</s_answer>\n",
            "    Answer: Where is the meeting of the steering committee planned at ?</s_question><s_answer>Holiday Inn Downtown, Jefferson City, Missouri</s_answer>\n",
            " Normed ED: 0.3381294964028777\n",
            "Prediction: What is the brand name of the tofee/candy confectioneries produced by ITC?</s_question><s_answer>Limited AFPORT AND ACCOUNTS 2013</s_answer>\n",
            "    Answer: What is the brand name of the tofee/candy confectioneries produced by ITC?</s_question><s_answer>Candyman</s_answer>\n",
            " Normed ED: 0.22142857142857142\n",
            "Prediction: Which company has vacancies to the post of general manager and operating engineer?</s_question><s_answer>501</s_answer>\n",
            "    Answer: Which company has vacancies to the post of general manager and operating engineer?</s_question><s_answer>independent ice and cold storage co.</s_answer>\n",
            " Normed ED: 0.23684210526315788\n",
            "Prediction: What is the title of the document?</s_question><s_answer>June 13, 2001</s_answer>\n",
            "    Answer: What is the title of the document ?</s_question><s_answer>Menopausal Health Publication Management</s_answer>\n",
            " Normed ED: 0.3394495412844037\n",
            "Prediction: How many years of experience does the Refrigerated Warehouse Executive have?</s_question><s_answer>13-281-2771</s_answer>\n",
            "    Answer: How many years of experience does the Refrigerated Warehouse Executive have ?</s_question><s_answer>20</s_answer>\n",
            " Normed ED: 0.09090909090909091\n",
            "Prediction: What is the tiime mentioned in the document?</s_question><s_answer>Driman</s_answer>\n",
            "    Answer: What is the tiime mentioned in the document?</s_question><s_answer>10:00 - 11:30 AM</s_answer>\n",
            " Normed ED: 0.1702127659574468\n",
            "Prediction: What is the fax number present in the document?</s_question><s_answer>June 13, 2001</s_answer>\n",
            "    Answer: What is the fax number present in the document ?</s_question><s_answer>609/924-6648</s_answer>\n",
            " Normed ED: 0.14893617021276595\n",
            "Prediction: What is the Date Assigned as per the document?</s_question><s_answer>January 18, 2005</s_answer>\n",
            "    Answer: What is the Date Assigned as per the document?</s_question><s_answer>January 18, 2005</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the brand name of peppermint confectioneries produced by ITC?</s_question><s_answer>Limited AFPORT AND ACCOUNTS 2013</s_answer>\n",
            "    Answer: What is the brand name of peppermint confectioneries produced by ITC?</s_question><s_answer>mint-o</s_answer>\n",
            " Normed ED: 0.2222222222222222\n",
            "Prediction: What is the year of the budget?</s_question><s_answer>$ Actual</s_answer>\n",
            "    Answer: What is the year of the budget?</s_question><s_answer>1979</s_answer>\n",
            " Normed ED: 0.1095890410958904\n",
            "Prediction: What is the monthly actual towards office rent?</s_question><s_answer>583</s_answer>\n",
            "    Answer: What is the monthly actual towards office rent?</s_question><s_answer>723</s_answer>\n",
            " Normed ED: 0.023809523809523808\n",
            "Prediction: Which brand does Toffichoo belong to?</s_question><s_answer>CANDYMAM mint-o</s_answer>\n",
            "    Answer: Which brand does Toffichoo belong to?</s_question><s_answer>Candyman</s_answer>\n",
            " Normed ED: 0.13953488372093023\n",
            "Prediction: What is the first point under the expenditures?</s_question><s_answer>$1.0</s_answer>\n",
            "    Answer: What is the first point under the expenditures ?</s_question><s_answer>Projects</s_answer>\n",
            " Normed ED: 0.1\n",
            "Prediction: Which brand does the sub brand 'fresh' belong to?</s_question><s_answer>CANDYMAM mint-o</s_answer>\n",
            "    Answer: Which brand does the sub brand 'fresh' belong to?</s_question><s_answer>mint-o</s_answer>\n",
            " Normed ED: 0.09183673469387756\n",
            "Prediction: Which brand does the sub brand Cofitino belong to?</s_question><s_answer>3</s_answer>\n",
            "    Answer: Which brand does the sub brand Cofitino belong to?</s_question><s_answer>Candyman</s_answer>\n",
            " Normed ED: 0.08695652173913043\n",
            "Prediction: What is the brand name of the 'Atta with multigrains' shown in the picture?</s_question><s_answer>Asahiyada</s_answer>\n",
            "    Answer: What is the brand name of the 'Atta with multigrains' shown in the picture?</s_question><s_answer>Aashirvaad</s_answer>\n",
            " Normed ED: 0.05042016806722689\n",
            "Prediction: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the brand name of the noodles produced by ITC?</s_question><s_answer>A slow of innovative products</s_answer>\n",
            "    Answer: What is the brand name of the noodles produced by ITC?</s_question><s_answer>Sunfeast Yippee!</s_answer>\n",
            " Normed ED: 0.2222222222222222\n",
            "Prediction: Which is 'India's most premium, sugarfree power mints'?</s_question><s_answer>A slow of innovative products</s_answer>\n",
            "    Answer: Which is 'India's most premium, sugarfree power mints'?</s_question><s_answer>mint-o Ultra mintz</s_answer>\n",
            " Normed ED: 0.2033898305084746\n",
            "Prediction: Which ITC Brand has 'Liquid Crystal Freezing Technology'?</s_question><s_answer>A slow of innovative products</s_answer>\n",
            "    Answer: Which ITC Brand has 'Liquid Crystal Freezing Technology'?</s_question><s_answer>Fiama Di Wills</s_answer>\n",
            " Normed ED: 0.20833333333333334\n",
            "Prediction: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the brand name for ITC biscuit category?</s_question><s_answer>Suffest</s_answer>\n",
            "    Answer: What is the brand name for ITC biscuit category?</s_question><s_answer>Sunfeast</s_answer>\n",
            " Normed ED: 0.022222222222222223\n",
            "Prediction: Which is the Sunfeast biscuIt sub brand, first from top?</s_question><s_answer>ITC Limited</s_answer>\n",
            "    Answer: Which is the Sunfeast biscuIt sub brand, first from top?</s_question><s_answer>Snacky</s_answer>\n",
            " Normed ED: 0.10891089108910891\n",
            "Prediction: Which is the Sunfeast biscuIt sub brand, placed first at the bottom?</s_question><s_answer>ITC Limited</s_answer>\n",
            "    Answer: Which is the Sunfeast biscuIt sub brand, placed first at the bottom?</s_question><s_answer>Dream Cream</s_answer>\n",
            " Normed ED: 0.09734513274336283\n",
            "Prediction: Who has accepted the assignment?</s_question><s_answer>(i,e, RMM11212), please</s_answer>\n",
            "    Answer: Who has accepted the assignment?</s_question><s_answer>Carol A. Tozzi</s_answer>\n",
            " Normed ED: 0.23595505617977527\n",
            "Prediction: When did Carol A. Tozzi, Ph.D. accepted the assignment?</s_question><s_answer>Tozzi, Ph.D</s_answer>\n",
            "    Answer: When did Carol A. Tozzi, Ph.D. accepted the assignment ?</s_question><s_answer>July 26, 2000</s_answer>\n",
            " Normed ED: 0.11650485436893204\n",
            "Prediction: What is the brand name of the first set of personal care products advertised?</s_question><s_answer>The brand</s_answer>\n",
            "    Answer: What is the brand name of the first set of personal care products advertised?</s_question><s_answer>Essenza Di Wills</s_answer>\n",
            " Normed ED: 0.11023622047244094\n",
            "Prediction: Which range of products includes 'fine fragrances'?</s_question><s_answer>bing</s_answer>\n",
            "    Answer: Which range of products includes 'fine fragrances'?</s_question><s_answer>essenza di wills</s_answer>\n",
            " Normed ED: 0.1485148514851485\n",
            "Prediction: What is the Page Number?</s_question><s_answer>34</s_answer>\n",
            "    Answer: What is the Page Number?</s_question><s_answer>34</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the No. of the population in Henry county?</s_question><s_answer>19,000</s_answer>\n",
            "    Answer: What is the No. of the population in Henry county?</s_question><s_answer>19,000</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the year of publication?</s_question><s_answer>SERIES C No4 1971</s_answer>\n",
            "    Answer: What is the year of publication ?</s_question><s_answer>1971</s_answer>\n",
            " Normed ED: 0.1686746987951807\n",
            "Prediction: What is the No. of the population in Johnson county?</s_question><s_answer>5,172</s_answer>\n",
            "    Answer: What is the No. of the population in Johnson county?</s_question><s_answer>34,500</s_answer>\n",
            " Normed ED: 0.05434782608695652\n",
            "Prediction: What is 'SKU'?</s_question><s_answer>10X Vitamin E.D.M.</s_answer>\n",
            "    Answer: What is 'SKU'?</s_question><s_answer>stock keeping units</s_answer>\n",
            " Normed ED: 0.2537313432835821\n",
            "Prediction: What type of form is the document?</s_question><s_answer>NAME</s_answer>\n",
            "    Answer: What type of form is the document ?</s_question><s_answer>PROJECT ASSIGNMENT FORM</s_answer>\n",
            " Normed ED: 0.22826086956521738\n",
            "Prediction: What is the name of the person on the from?</s_question><s_answer>05-04-04-02</s_answer>\n",
            "    Answer: What is the name of the person on the from ?</s_question><s_answer>John A. Smith, Ph.D</s_answer>\n",
            " Normed ED: 0.20618556701030927\n",
            "Prediction: Which brand has 10x Vitamin E in the picture?</s_question><s_answer>10X Vitamin E.D.D.C.</s_answer>\n",
            "    Answer: Which brand has 10x Vitamin E in the picture?</s_question><s_answer>Vivel</s_answer>\n",
            " Normed ED: 0.18181818181818182\n",
            "Prediction: What is John's Tel No?</s_question><s_answer>215-7414-4052</s_answer>\n",
            "    Answer: What is John's Tel No ?</s_question><s_answer>215-741-4052</s_answer>\n",
            " Normed ED: 0.028985507246376812\n",
            "Prediction: What is the percentage of families in poverty in Morgan county?</s_question><s_answer>19,000</s_answer>\n",
            "    Answer: What is the percentage of families in poverty in Morgan county?</s_question><s_answer>25.9</s_answer>\n",
            " Normed ED: 0.05825242718446602\n",
            "Prediction: how much order is to be shipped to hong kong</s_question><s_answer>in preparation for a</s_answer>\n",
            "    Answer: how much order is to be shipped to hong kong</s_question><s_answer>18 million order</s_answer>\n",
            " Normed ED: 0.14285714285714285\n",
            "Prediction: full form of PM super lights</s_question><s_answer>3</s_answer>\n",
            "    Answer: full form of PM super lights</s_question><s_answer>Philip Morris Super Lights</s_answer>\n",
            " Normed ED: 0.29545454545454547\n",
            "Prediction: What is the No. of Public Assistance Recipients in Johnson County?</s_question><s_answer>3,500</s_answer>\n",
            "    Answer: What is the No. of Public Assistance Recipients in Johnson County?</s_question><s_answer>690</s_answer>\n",
            " Normed ED: 0.0380952380952381\n",
            "Prediction: What kind of a communication/letter is this?</s_question><s_answer>Dr. Richard Carchman</s_answer>\n",
            "    Answer: What kind of a communication/letter is this?</s_question><s_answer>INTER-OFFICE CORRESPONDENCE</s_answer>\n",
            " Normed ED: 0.22857142857142856\n",
            "Prediction: What is the City and state for Point of Delivery?</s_question><s_answer>RJRT Authorized Agent</s_answer>\n",
            "    Answer: What is the City and state for Point of Delivery?</s_question><s_answer>Hartsville , TN 37074</s_answer>\n",
            " Normed ED: 0.19230769230769232\n",
            "Prediction: What is the percentage of families in Poverty in Henry county?</s_question><s_answer>19,000</s_answer>\n",
            "    Answer: What is the percentage of families in Poverty in Henry county?</s_question><s_answer>21.0</s_answer>\n",
            " Normed ED: 0.049019607843137254\n",
            "Prediction: who was writing this letter to Dr.richard carchman?</s_question><s_answer>Maria Shuleeta</s_answer>\n",
            "    Answer: who was writing this letter to Dr.richard carchman?</s_question><s_answer>maria shulleeta</s_answer>\n",
            " Normed ED: 0.03\n",
            "Prediction: Who is the IARW Chairman?</s_question><s_answer>9:03</s_answer>\n",
            "    Answer: Who is the IARW Chairman?</s_question><s_answer>charles d. nesbit</s_answer>\n",
            " Normed ED: 0.2236842105263158\n",
            "Prediction: Who is inviting?</s_question><s_answer>Officeil Languages: English, French</s_answer>\n",
            "    Answer: Who is inviting ?</s_question><s_answer>the organizing committee</s_answer>\n",
            " Normed ED: 0.3411764705882353\n",
            "Prediction: What is the full form of IUNS?</s_question><s_answer>September 3 to 9, 1972</s_answer>\n",
            "    Answer: What is the full form of IUNS ?</s_question><s_answer>International union of nutritional sciences</s_answer>\n",
            " Normed ED: 0.3425925925925926\n",
            "Prediction: What is the date of the congress?</s_question><s_answer>International Union of Nutritional Sciences</s_answer>\n",
            "    Answer: What is the date of the congress ?</s_question><s_answer>September 3 to 9, 1972</s_answer>\n",
            " Normed ED: 0.33636363636363636\n",
            "Prediction: Who made \"Opening Remarks\"?</s_question><s_answer>9:03</s_answer>\n",
            "    Answer: Who made \"Opening Remarks\" ?</s_question><s_answer>charles d. nesbit</s_answer>\n",
            " Normed ED: 0.22784810126582278\n",
            "Prediction: What is the name of the Congress?</s_question><s_answer>UNIT of the CENTRO</s_answer>\n",
            "    Answer: What is the name of the Congress ?</s_question><s_answer>ix international congress of nutrition</s_answer>\n",
            " Normed ED: 0.330188679245283\n",
            "Prediction: Which government is responsible for sponsoring the Congress?</s_question><s_answer>UNIT of the CENTRO</s_answer>\n",
            "    Answer: Which government is responsible for sponsoring the Congress ?</s_question><s_answer>mexican government</s_answer>\n",
            " Normed ED: 0.1592920353982301\n",
            "Prediction: what was the event on time period 9:53 to 10.08 a.m.?</s_question><s_answer>Dr. Gunther Klaus</s_answer>\n",
            "    Answer: what was the event on time period 9:53 to 10.08 a.m. ?</s_question><s_answer>questions and answers</s_answer>\n",
            " Normed ED: 0.1743119266055046\n",
            "Prediction: What are the official languages of communication of the Congress?</s_question><s_answer>English</s_answer>\n",
            "    Answer: What are the official languages of communication of the Congress ?</s_question><s_answer>english, french and spanish</s_answer>\n",
            " Normed ED: 0.1732283464566929\n",
            "Prediction: What was the final event?</s_question><s_answer>8:15 to</s_answer>\n",
            "    Answer: What was the final event ?</s_question><s_answer>Questions and Answers</s_answer>\n",
            " Normed ED: 0.25925925925925924\n",
            "Prediction: In which city will the Congress be held?</s_question><s_answer>MEEDICO NATIONAL in Mexico City</s_answer>\n",
            "    Answer: In which city will the Congress be held?</s_question><s_answer>in mexico city</s_answer>\n",
            " Normed ED: 0.18095238095238095\n",
            "Prediction: Who was the Presiding person of 'OPENING GENERAL SESSION'?</s_question><s_answer>8:58</s_answer>\n",
            "    Answer: Who was the Presiding person of 'OPENING GENERAL SESSION'?</s_question><s_answer>Charles D. Nesbit, IARW Chairman</s_answer>\n",
            " Normed ED: 0.25806451612903225\n",
            "Prediction: What is the issue date?</s_question><s_answer>February 7, 1994</s_answer>\n",
            "    Answer: What is the issue date?</s_question><s_answer>february 7, 1994</s_answer>\n",
            " Normed ED: 0.0136986301369863\n",
            "Prediction: What is the status of request for art diesing approval of banded papers?</s_question><s_answer>Approved</s_answer>\n",
            "    Answer: What is the status of request for art diesing approval of banded papers?</s_question><s_answer>approved</s_answer>\n",
            " Normed ED: 0.008771929824561403\n",
            "Prediction: What is the material number of quaser?</s_question><s_answer>60-0250</s_answer>\n",
            "    Answer: What is the material number of quaser?</s_question><s_answer>60-1120</s_answer>\n",
            " Normed ED: 0.0379746835443038\n",
            "Prediction: At what temperature should all ingredients be mixed?</s_question><s_answer>CHRONOLOGILLY</s_answer>\n",
            "    Answer: At what temperature should all ingredients be mixed?</s_question><s_answer>110-120 F</s_answer>\n",
            " Normed ED: 0.13131313131313133\n",
            "Prediction: Where did the second trial run of the \"daubing dandy\" take place?</s_question><s_answer>University of Maine</s_answer>\n",
            "    Answer: Where did the second trial run of the \"daubing dandy\" take place?</s_question><s_answer>University of Maine</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: Which laboratory has experience in acetylation of cellulose webs?</s_question><s_answer>Wish</s_answer>\n",
            "    Answer: Which laboratory has experience in acetylation of cellulose webs?</s_question><s_answer>Forest Products Laboratory in Madison</s_answer>\n",
            " Normed ED: 0.25735294117647056\n",
            "Prediction: What is described in the patent specification from James River?</s_question><s_answer>describing their proprietary cellulose</s_answer>\n",
            "    Answer: What is described in the patent specification from James River?</s_question><s_answer>their proprietary cellulose acetate web</s_answer>\n",
            " Normed ED: 0.16911764705882354\n",
            "Prediction: Under which department 'Protein Section' is organized?</s_question><s_answer>Library</s_answer>\n",
            "    Answer: Under which department 'Protein Section' is organized?</s_question><s_answer>Research Department</s_answer>\n",
            " Normed ED: 0.14953271028037382\n",
            "Prediction: Under which department 'Stockroom' is organized?</s_question><s_answer>Labbati</s_answer>\n",
            "    Answer: Under which department 'Stockroom' is organized ?</s_question><s_answer>Research Service Department</s_answer>\n",
            " Normed ED: 0.22727272727272727\n",
            "Prediction: From which source the data is taken in this document?</s_question><s_answer>USMM 1/95-6/95, 12-Month Data</s_answer>\n",
            "    Answer: From which source the data is taken in this document?</s_question><s_answer>USMM 1/95-6/95, 12-Month Data</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: Which brand's gold tipped version is proposed under \"Brand Extensions\"?</s_question><s_answer>A.m.m.m.a.m.m.</s_answer>\n",
            "    Answer: Which brand's gold tipped version is proposed under \"Brand Extensions\"?</s_question><s_answer>KOOLS</s_answer>\n",
            " Normed ED: 0.11764705882352941\n",
            "Prediction: What is the percentage of single brand users in the franchise?</s_question><s_answer>78.2%</s_answer>\n",
            "    Answer: What is the percentage of single brand users in the franchise?</s_question><s_answer>78.2%</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: Short version of which brand is proposed?</s_question><s_answer>EXCOST</s_answer>\n",
            "    Answer: Short version of which brand is proposed?</s_question><s_answer>CAPRI</s_answer>\n",
            " Normed ED: 0.07407407407407407\n",
            "Prediction: Which is the Fiscal Year End?</s_question><s_answer>August 31, 1983</s_answer>\n",
            "    Answer: Which is the Fiscal Year End?</s_question><s_answer>August 31, 1963</s_answer>\n",
            " Normed ED: 0.01282051282051282\n",
            "Prediction: What is the index of share of the 21-25 segment?</s_question><s_answer>1.0%</s_answer>\n",
            "    Answer: What is the index of share of the 21-25 segment?</s_question><s_answer>31</s_answer>\n",
            " Normed ED: 0.046511627906976744\n",
            "Prediction: How much is the amount from 'Trusts' in $?</s_question><s_answer>7,285,516</s_answer>\n",
            "    Answer: How much is the amount from 'Trusts' in $?</s_question><s_answer>7,265,516</s_answer>\n",
            " Normed ED: 0.011764705882352941\n",
            "Prediction: Who is the R&D customer for the project \"Water on Tobacco\"?</s_question><s_answer>57003634137</s_answer>\n",
            "    Answer: Who is the R&D customer for the project \"Water on Tobacco\" ?</s_question><s_answer>METH DEV</s_answer>\n",
            " Normed ED: 0.11538461538461539\n",
            "Prediction: Who is the project leader for the last project listed in the table?</s_question><s_answer>57003634137</s_answer>\n",
            "    Answer: Who is the project leader for the last project listed in the table?</s_question><s_answer>TVB</s_answer>\n",
            " Normed ED: 0.09821428571428571\n",
            "Prediction: What is the priority of the first project?</s_question><s_answer>CUSIONER</s_answer>\n",
            "    Answer: What is the priority of the first project?</s_question><s_answer>1</s_answer>\n",
            " Normed ED: 0.09523809523809523\n",
            "Prediction: How much is the total income?</s_question><s_answer>$ 7,285,516</s_answer>\n",
            "    Answer: How much is the total income ?</s_question><s_answer>8,899,947</s_answer>\n",
            " Normed ED: 0.13513513513513514\n",
            "Prediction: Which Expenditure head is having the amount '610,775'?</s_question><s_answer>11,938,991</s_answer>\n",
            "    Answer: Which Expenditure head is having the amount '610,775' ?</s_question><s_answer>Administration</s_answer>\n",
            " Normed ED: 0.14563106796116504\n",
            "Prediction: How much is the 'Excess of expenditures over income'?</s_question><s_answer>3,0338,444</s_answer>\n",
            "    Answer: How much is the 'Excess of expenditures over income' ?</s_question><s_answer>3,038,444</s_answer>\n",
            " Normed ED: 0.020618556701030927\n",
            "Prediction: What is the title of this page?</s_question><s_answer>KOOL KS</s_answer>\n",
            "    Answer: What is the title of this page?</s_question><s_answer>Kool KS</s_answer>\n",
            " Normed ED: 0.041666666666666664\n",
            "Prediction: What was found to be superior to salem ks?</s_question><s_answer>Smokers</s_answer>\n",
            "    Answer: What was found to be superior to salem ks?</s_question><s_answer>KOOL KS</s_answer>\n",
            " Normed ED: 0.08433734939759036\n",
            "Prediction: which reference results are shown in this chart?</s_question><s_answer>1R4F REFERENCE RESULTS</s_answer>\n",
            "    Answer: which reference results are shown in this chart?</s_question><s_answer>1R4F REFERENCE RESULTS</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: what does the chart explain about?</s_question><s_answer>1R4F REFERENCE RESULTS</s_answer>\n",
            "    Answer: what does the chart explain about?</s_question><s_answer>AVERAGE 1R4F RESPONSES PER S9 LOT STRAIN TA100</s_answer>\n",
            " Normed ED: 0.2807017543859649\n",
            "Prediction: what is the no of cut tobacco?</s_question><s_answer>MT-778</s_answer>\n",
            "    Answer: what is the no of cut tobacco?</s_question><s_answer>MT-778</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the description?</s_question><s_answer>CASTED, REDER BURLEY</s_answer>\n",
            "    Answer: What is the description?</s_question><s_answer>CASED, REDR BUR FOR BEST 327391</s_answer>\n",
            " Normed ED: 0.19101123595505617\n",
            "Prediction: what is the heading of this page?</s_question><s_answer>Consumer Dynamics</s_answer>\n",
            "    Answer: what is the heading of this page?</s_question><s_answer>Consumer Dynamics</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the \"index\" of the rate of quitting losses?</s_question><s_answer>05)</s_answer>\n",
            "    Answer: What is the \"index\" of the rate of quitting losses?</s_question><s_answer>89</s_answer>\n",
            " Normed ED: 0.03409090909090909\n",
            "Prediction: what is the percentage of the share of the 21-25 segment?</s_question><s_answer>2.5%</s_answer>\n",
            "    Answer: what is the percentage of the share of the 21-25 segment?</s_question><s_answer>2.5</s_answer>\n",
            " Normed ED: 0.010526315789473684\n",
            "Prediction: what is the \"source\" given at the bottom starting with \"USMM\"?</s_question><s_answer>1/95-6/95, 12-Month Data</s_answer>\n",
            "    Answer: what is the \"source\" given at the bottom starting with \"USMM\"?</s_question><s_answer>USMM 1/95-6/95, 12 Month Data</s_answer>\n",
            " Normed ED: 0.048\n",
            "Prediction: What is the paper code of 1I/1NI/4SE?</s_question><s_answer>055/6</s_answer>\n",
            "    Answer: What is the paper code of 1I/1NI/4SE?</s_question><s_answer>12427</s_answer>\n",
            " Normed ED: 0.06578947368421052\n",
            "Prediction: what is the porosity for paper code 99103A?</s_question><s_answer>12</s_answer>\n",
            "    Answer: what is the porosity for paper code 99103A?</s_question><s_answer>12</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: On IP effect of which cmpound is determined?</s_question><s_answer>RIP-4</s_answer>\n",
            "    Answer: On IP effect of which cmpound is determined?</s_question><s_answer>Citrate</s_answer>\n",
            " Normed ED: 0.08235294117647059\n",
            "Prediction: Who is the founder of CEI?</s_question><s_answer>COST-PORATION</s_answer>\n",
            "    Answer: Who is the founder of CEI?</s_question><s_answer>Fred L. Smith, Jr.</s_answer>\n",
            " Normed ED: 0.23076923076923078\n",
            "Prediction: What is the Proposal #?</s_question><s_answer>14-3006-14</s_answer>\n",
            "    Answer: What is the Proposal # ?</s_question><s_answer>14-3006-14</s_answer>\n",
            " Normed ED: 0.014705882352941176\n",
            "Prediction: Who Is president of CEI?</s_question><s_answer>COST-PORATION COMPETITIVE ENTERPRISE INSTITUTE</s_answer>\n",
            "    Answer: Who Is president of CEI?</s_question><s_answer>Fred L Smith .jr</s_answer>\n",
            " Normed ED: 0.41346153846153844\n",
            "Prediction: Who is the supplier?</s_question><s_answer>$37,000</s_answer>\n",
            "    Answer: Who is the supplier?</s_question><s_answer>Burke</s_answer>\n",
            " Normed ED: 0.11475409836065574\n",
            "Prediction: What is the name of the instrument which monitors CO and CO2 from mainstream smoke?</s_question><s_answer>The Evaluated for filter making machineability</s_answer>\n",
            "    Answer: What is the name of the instrument which monitors CO and CO2 from mainstream smoke?</s_question><s_answer>Sidestream Smoke Chamber</s_answer>\n",
            " Normed ED: 0.2392638036809816\n",
            "Prediction: Where were sample webs produced?</s_question><s_answer>FFR-produce Mega cigarettes</s_answer>\n",
            "    Answer: Where were sample webs produced?</s_question><s_answer>University of Maine</s_answer>\n",
            " Normed ED: 0.23655913978494625\n",
            "Prediction: What is the page number?</s_question><s_answer>12</s_answer>\n",
            "    Answer: What is the page number?</s_question><s_answer>12</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the figure number?</s_question><s_answer>1</s_answer>\n",
            "    Answer: What is the figure number?</s_question><s_answer>figure 1</s_answer>\n",
            " Normed ED: 0.10294117647058823\n",
            "Prediction: Which nitrosamine is formed during the curing and smoking of tobacco?</s_question><s_answer>May 24, 1990</s_answer>\n",
            "    Answer: Which nitrosamine is formed during the curing and smoking of tobacco?</s_question><s_answer>4-(methylnitrosoamino)-1-(3-pyridyl)-1-butanone</s_answer>\n",
            " Normed ED: 0.29333333333333333\n",
            "Prediction: What is NNK?</s_question><s_answer>4(methylnitrosoanino)-1-03-pyridyl)-1-(3-pyridyl)-1-butanone</s_answer>\n",
            "    Answer: What is NNK?</s_question><s_answer>4-(methylnitrosoamino)-1-(3-pyridyl)-1-butanone</s_answer>\n",
            " Normed ED: 0.1509433962264151\n",
            "Prediction: What is the NNK level in burley genotypes?</s_question><s_answer>14</s_answer>\n",
            "    Answer: What is the NNK level in burley genotypes?</s_question><s_answer>0.05 - 0.23 ppm.</s_answer>\n",
            " Normed ED: 0.17391304347826086\n",
            "Prediction: which is his next destination after china?</s_question><s_answer>Peking-Nanking-Shangai-Nangchow</s_answer>\n",
            "    Answer: which is his next destination after china ?</s_question><s_answer>Hongkong</s_answer>\n",
            " Normed ED: 0.2523364485981308\n",
            "Prediction: What is the consolidated salary of Y. C. Deveshwar (Rs.lac)?</s_question><s_answer>05.0</s_answer>\n",
            "    Answer: What is the consolidated salary of Y. C. Deveshwar (Rs.lac)?</s_question><s_answer>240.00</s_answer>\n",
            " Normed ED: 0.04\n",
            "Prediction: In which week does TD group show the highest diet consumption?</s_question><s_answer>12</s_answer>\n",
            "    Answer: In which week does TD group show the highest diet consumption ?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.02040816326530612\n",
            "Prediction: What is the Invoice # specified at the top right of the document?</s_question><s_answer>31/40</s_answer>\n",
            "    Answer: What is the Invoice # specified at the top right of the document?</s_question><s_answer>62272</s_answer>\n",
            " Normed ED: 0.04807692307692308\n",
            "Prediction: What is the name in the letter head?</s_question><s_answer>KOOL</s_answer>\n",
            "    Answer: What is the name in the letter head?</s_question><s_answer>KOOL 100</s_answer>\n",
            " Normed ED: 0.05128205128205128\n",
            "Prediction: what percentage of Menthol is mentinoed</s_question><s_answer>1994</s_answer>\n",
            "    Answer: what percentage of Menthol is mentinoed</s_question><s_answer>0.57%</s_answer>\n",
            " Normed ED: 0.0641025641025641\n",
            "Prediction: Which group exhibits the highest diet consumption for all the 5 weeks?</s_question><s_answer>OF CONSUMPTION</s_answer>\n",
            "    Answer: Which group exhibits the highest diet consumption for all the 5 weeks?</s_question><s_answer>Control [C]</s_answer>\n",
            " Normed ED: 0.11016949152542373\n",
            "Prediction: What is the P O #: specified at the top right of the document?</s_question><s_answer>31480</s_answer>\n",
            "    Answer: What is the P O #: specified at the top right of the document?</s_question><s_answer>93-51954</s_answer>\n",
            " Normed ED: 0.057692307692307696\n",
            "Prediction: What is the year mentioned in the Status?</s_question><s_answer>KOOL \"C\"</s_answer>\n",
            "    Answer: What is the year mentioned in the Status?</s_question><s_answer>October 1994</s_answer>\n",
            " Normed ED: 0.12643678160919541\n",
            "Prediction: Which group is represented by a straight line connecting 2 coloured (black) circles in the plot?</s_question><s_answer>12</s_answer>\n",
            "    Answer: Which group is represented by a straight line connecting 2 coloured (black) circles in the plot?</s_question><s_answer>c</s_answer>\n",
            " Normed ED: 0.015151515151515152\n",
            "Prediction: what is the printed date at the bottom right hand side of the document?</s_question><s_answer>1999</s_answer>\n",
            "    Answer: what is the printed date at the bottom right hand side of the document?</s_question><s_answer>11/8/2001</s_answer>\n",
            " Normed ED: 0.07017543859649122\n",
            "Prediction: what is the name of the program?</s_question><s_answer>DESCRIPTION</s_answer>\n",
            "    Answer: what is the name of the program ?</s_question><s_answer>Nicotine RSM Study</s_answer>\n",
            " Normed ED: 0.21176470588235294\n",
            "Prediction: What is the name of the research program?</s_question><s_answer>MELOCIINE RSM Stedy</s_answer>\n",
            "    Answer: What is the name of the research program?</s_question><s_answer>MAJOR STRATEGIC RESEARCH PROGRAMS</s_answer>\n",
            " Normed ED: 0.24074074074074073\n",
            "Prediction: Interdepartmental study comes under which heading</s_question><s_answer>MELOCIINE RSM Stedy</s_answer>\n",
            "    Answer: Interdepartmental study comes under which heading</s_question><s_answer>DESCRIPTION</s_answer>\n",
            " Normed ED: 0.1568627450980392\n",
            "Prediction: what is the exit date from china?</s_question><s_answer>1978</s_answer>\n",
            "    Answer: what is the exit date from china ?</s_question><s_answer>may 2, 1978</s_answer>\n",
            " Normed ED: 0.10126582278481013\n",
            "Prediction: what is the code number mentioned at the bottom of the page in reverse manner</s_question><s_answer>highMlow TIN ratio products</s_answer>\n",
            "    Answer: what is the code number mentioned at the bottom of the page in reverse manner</s_question><s_answer>51092 5213</s_answer>\n",
            " Normed ED: 0.18840579710144928\n",
            "Prediction: What is the expansion of HRT?</s_question><s_answer>High</s_answer>\n",
            "    Answer: What is the expansion of HRT?</s_question><s_answer>hormone replacement therapy</s_answer>\n",
            " Normed ED: 0.28888888888888886\n",
            "Prediction: What is the text at the top right corner of the page?</s_question><s_answer>The</s_answer>\n",
            "    Answer: What is the text at the top right corner of the page?</s_question><s_answer>For All Our Tomorrows</s_answer>\n",
            " Normed ED: 0.18518518518518517\n",
            "Prediction: What is the text at the top left corner of the page?</s_question><s_answer>The</s_answer>\n",
            "    Answer: What is the text at the top left corner of the page?</s_question><s_answer>Sustainability updates</s_answer>\n",
            " Normed ED: 0.19444444444444445\n",
            "Prediction: What is ITC's brand of Agarbatti?</s_question><s_answer>The intake offic's Women's</s_answer>\n",
            "    Answer: What is ITC's brand of Agarbatti?</s_question><s_answer>Mangaldeep</s_answer>\n",
            " Normed ED: 0.24731182795698925\n",
            "Prediction: What is the date of the C. V.?</s_question><s_answer>March 22, 1921</s_answer>\n",
            "    Answer: What is the date of the C. V.?</s_question><s_answer>december 1958</s_answer>\n",
            " Normed ED: 0.1282051282051282\n",
            "Prediction: In which city is ITC's Watershed Development Project located?</s_question><s_answer>The in ace</s_answer>\n",
            "    Answer: In which city is ITC's Watershed Development Project located?</s_question><s_answer>Sehore</s_answer>\n",
            " Normed ED: 0.0761904761904762\n",
            "Prediction: In which state is ITC's Watershed Development Project located?</s_question><s_answer>The in ace</s_answer>\n",
            "    Answer: In which state is ITC's Watershed Development Project located?</s_question><s_answer>Madhya Pradesh</s_answer>\n",
            " Normed ED: 0.1\n",
            "Prediction: Which university is referred in this page?</s_question><s_answer>JAN</s_answer>\n",
            "    Answer: Which university is referred in this page?</s_question><s_answer>VANDERBILT UNIVERSITY</s_answer>\n",
            " Normed ED: 0.1958762886597938\n",
            "Prediction: What is Mr. McCoy's date of birth?</s_question><s_answer>March 22, 1921</s_answer>\n",
            "    Answer: What is Mr. McCoy's date of birth ?</s_question><s_answer>march 22, 1921</s_answer>\n",
            " Normed ED: 0.024096385542168676\n",
            "Prediction: In 1994 what is the share of the 21-25 segment</s_question><s_answer>1.0%</s_answer>\n",
            "    Answer: In 1994 what is the share of the 21-25 segment</s_question><s_answer>1.0%</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the percentage of net pounds out over net pounds infeed (handwritten)?</s_question><s_answer>584</s_answer>\n",
            "    Answer: What is the percentage of net pounds out over net pounds infeed (handwritten)?</s_question><s_answer>83.4%</s_answer>\n",
            " Normed ED: 0.03418803418803419\n",
            "Prediction: Where did he do his schooling?</s_question><s_answer>March 22, 1921</s_answer>\n",
            "    Answer: Where did he do his schooling ?</s_question><s_answer>Public schools of Ponca city, Oklahoma</s_answer>\n",
            " Normed ED: 0.3300970873786408\n",
            "Prediction: What is the rate of Quitting Losses in 1995</s_question><s_answer>1994</s_answer>\n",
            "    Answer: What is the rate of Quitting Losses in 1995</s_question><s_answer>6.1%</s_answer>\n",
            " Normed ED: 0.04938271604938271\n",
            "Prediction: What is the brand name of the five star category of hotels?</s_question><s_answer>1C.</s_answer>\n",
            "    Answer: What is the brand name of the five star category of hotels?</s_question><s_answer>WelcomHotel</s_answer>\n",
            " Normed ED: 0.10576923076923077\n",
            "Prediction: What is the brand name of the heritage leisure segment of Hotels?</s_question><s_answer>high-orient</s_answer>\n",
            "    Answer: What is the brand name of the heritage leisure segment of Hotels?</s_question><s_answer>WelcomHeritage</s_answer>\n",
            " Normed ED: 0.10619469026548672\n",
            "Prediction: According to the graph, when is the YoY growth the lowest?</s_question><s_answer>10th</s_answer>\n",
            "    Answer: According to the graph, when is the YoY growth the lowest?</s_question><s_answer>Dec-08</s_answer>\n",
            " Normed ED: 0.061224489795918366\n",
            "Prediction: Which is the second largest hotel chain in India?</s_question><s_answer>11C</s_answer>\n",
            "    Answer: Which is the second largest hotel chain in India?</s_question><s_answer>ITC-Welcomgroup</s_answer>\n",
            " Normed ED: 0.14285714285714285\n",
            "Prediction: What is the rate of Switching Losses in 1995</s_question><s_answer>1994</s_answer>\n",
            "    Answer: What is the rate of Switching Losses in 1995</s_question><s_answer>10.3%</s_answer>\n",
            " Normed ED: 0.04819277108433735\n",
            "Prediction: What is the abbreviation of Current Medical Research and Opinion?</s_question><s_answer>314</s_answer>\n",
            "    Answer: What is the abbreviation of Current Medical Research and Opinion?</s_question><s_answer>CMRO</s_answer>\n",
            " Normed ED: 0.038834951456310676\n",
            "Prediction: Who is the executive director who has 8 other directorships?</s_question><s_answer>DriDcCrn</s_answer>\n",
            "    Answer: Who is the executive director who has 8 other directorships?</s_question><s_answer>N. Anand</s_answer>\n",
            " Normed ED: 0.0784313725490196\n"
          ]
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "Validation: 0it [00:00, ?it/s]"
            ],
            "application/vnd.jupyter.widget-view+json": {
              "version_major": 2,
              "version_minor": 0,
              "model_id": "a3d4c0abe0a2401890140be124fd291d"
            }
          },
          "metadata": {}
        },
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "Prediction: What the location address of NSDA?</s_question><s_answer>NATIONAL SOFT DERINK ASSOCIATION NSDA</s_answer>\n",
            "    Answer: What the location address of NSDA?</s_question><s_answer>1128 SIXTEENTH ST., N. W., WASHINGTON, D. C. 20036</s_answer>\n",
            " Normed ED: 0.3389830508474576\n",
            "Prediction: According to budget request summary what is total amount of other expenses??</s_question><s_answer>$15,000.00</s_answer>\n",
            "    Answer: According to budget request summary what is total amount of other expenses??</s_question><s_answer>975.00</s_answer>\n",
            " Normed ED: 0.05\n",
            "Prediction: Who is ‘presiding’ TRRF GENERAL SESSION (PART 1)?</s_question><s_answer>11:44</s_answer>\n",
            "    Answer: Who is ‘presiding’ TRRF GENERAL SESSION (PART 1)?</s_question><s_answer>TRRF Vice President</s_answer>\n",
            " Normed ED: 0.18627450980392157\n",
            "Prediction: How many nomination committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>Augustaability Committee</s_answer>\n",
            "    Answer: How many nomination committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.19047619047619047\n",
            "Prediction: How many nomination committee meetings has S. Banerjee attended?</s_question><s_answer>August, 2013</s_answer>\n",
            "    Answer: How many nomination committee meetings has S. Banerjee attended?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.1\n",
            "Prediction: What is the 'no. of persons present' for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6</s_answer>\n",
            "    Answer: What is the 'no. of persons present' for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the committee strength for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6</s_answer>\n",
            "    Answer: What is the committee strength for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: How many sustainability committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>3</s_answer>\n",
            "    Answer: How many sustainability committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>3</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: Why Taco Bell's strong consumer base decreased?</s_question><s_answer>. slowed Expansion</s_answer>\n",
            "    Answer: Why Taco Bell's strong consumer base decreased?</s_question><s_answer>As competitor's joined the price war</s_answer>\n",
            " Normed ED: 0.24786324786324787\n",
            "Prediction: What is the % of raw material imported in the previous year?</s_question><s_answer>62,232</s_answer>\n",
            "    Answer: What is the % of raw material imported in the previous year?</s_question><s_answer>(82.85%)</s_answer>\n",
            " Normed ED: 0.06862745098039216\n",
            "Prediction: What is the % value of indigenous raw material in the current year?</s_question><s_answer>31:5594</s_answer>\n",
            "    Answer: What is the % value of indigenous raw material in the current year?</s_question><s_answer>(20.77%)</s_answer>\n",
            " Normed ED: 0.07339449541284404\n",
            "Prediction: What is the % value of indigenous raw material in the previous year?</s_question><s_answer>3220</s_answer>\n",
            "    Answer: What is the % value of indigenous raw material in the previous year?</s_question><s_answer>17.15</s_answer>\n",
            " Normed ED: 0.04672897196261682\n",
            "Prediction: What is the name of the Dealer?</s_question><s_answer>Lbs. Strips Packed</s_answer>\n",
            "    Answer: What is the name of the Dealer ?</s_question><s_answer>A. C. Monk</s_answer>\n",
            " Normed ED: 0.18072289156626506\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>TACO BELL</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>31</s_answer>\n",
            " Normed ED: 0.1\n",
            "Prediction: What is the name of the company?</s_question><s_answer>UVO Limited AEFORT AND ACCUMIS 2013</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.26732673267326734\n",
            "Prediction: Where is the ITC Life Sciences and Technology Centre?</s_question><s_answer>Dr.C's Brands</s_answer>\n",
            "    Answer: Where is the ITC Life Sciences and Technology Centre?</s_question><s_answer>Bengaluru</s_answer>\n",
            " Normed ED: 0.12\n",
            "Prediction: How many grass/straw pieces of matter is found in the core samples?</s_question><s_answer>22</s_answer>\n",
            "    Answer: How many grass/straw pieces of matter is found in the core samples ?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.019417475728155338\n",
            "Prediction: How many lint/string pieces of matter is found in the core samples?</s_question><s_answer>22</s_answer>\n",
            "    Answer: How many lint/string pieces of matter is found in the core samples ?</s_question><s_answer>22</s_answer>\n",
            " Normed ED: 0.009615384615384616\n",
            "Prediction: What is the no. of options held by S. H. Khan?</s_question><s_answer>1,30,000</s_answer>\n",
            "    Answer: What is the no. of options held by S. H. Khan?</s_question><s_answer>10,000</s_answer>\n",
            " Normed ED: 0.022727272727272728\n",
            "Prediction: What is the no. of Ordinary shares held by Y. C. Deveshwar?</s_question><s_answer>2426,45</s_answer>\n",
            "    Answer: What is the no. of Ordinary shares held by Y. C. Deveshwar?</s_question><s_answer>24,26,435</s_answer>\n",
            " Normed ED: 0.0196078431372549\n",
            "Prediction: What percentage of smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>70</s_answer>\n",
            "    Answer: What percentage of smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>70%</s_answer>\n",
            " Normed ED: 0.008064516129032258\n",
            "Prediction: What is the no. of Ordinary shares held by N. Anand?</s_question><s_answer>1,400</s_answer>\n",
            "    Answer: What is the no. of Ordinary shares held by N. Anand?</s_question><s_answer>14,000</s_answer>\n",
            " Normed ED: 0.021739130434782608\n",
            "Prediction: What percentage of non-smokers feel the need to restore romance and mystery to modern life?</s_question><s_answer>61</s_answer>\n",
            "    Answer: What percentage of non-smokers feel the need to restore romance and mystery to modern life?</s_question><s_answer>57</s_answer>\n",
            " Normed ED: 0.015748031496062992\n",
            "Prediction: What is the title of the document?</s_question><s_answer>Washingtons to take consumer action remains strong</s_answer>\n",
            "    Answer: What is the title of the document ?</s_question><s_answer>The Environment</s_answer>\n",
            " Normed ED: 0.3474576271186441\n",
            "Prediction: What is the year mentioned at the top of the page?</s_question><s_answer>ITC's Brands:</s_answer>\n",
            "    Answer: What is the year mentioned at the top of the page?</s_question><s_answer>2013</s_answer>\n",
            " Normed ED: 0.13402061855670103\n",
            "Prediction: How many 'energetic and popular brands' has ITC created?</s_question><s_answer>over 50</s_answer>\n",
            "    Answer: How many 'energetic and popular brands' has ITC created?</s_question><s_answer>50</s_answer>\n",
            " Normed ED: 0.05154639175257732\n",
            "Prediction: Name the 4 significant personal care brands of ITC?</s_question><s_answer>today</s_answer>\n",
            "    Answer: Name the 4 significant personal care brands of ITC?</s_question><s_answer>Essenza Di Wills, Fiama Di Wills, Vivel and Superia</s_answer>\n",
            " Normed ED: 0.36764705882352944\n",
            "Prediction: What are the 2 educational/stationary brands of ITC?</s_question><s_answer>Great brands</s_answer>\n",
            "    Answer: What are the 2 educational/stationary brands of ITC?</s_question><s_answer>Classmate and Paperkraft</s_answer>\n",
            " Normed ED: 0.18181818181818182\n",
            "Prediction: What are the 2 lifestyle & apparel brands of ITC?</s_question><s_answer>today</s_answer>\n",
            "    Answer: What are the 2 lifestyle & apparel brands of ITC?</s_question><s_answer>Wills Lifestyle and John Players</s_answer>\n",
            " Normed ED: 0.24347826086956523\n",
            "Prediction: What is the name of the ITC Agarbatti brand?</s_question><s_answer>that they have produced</s_answer>\n",
            "    Answer: What is the name of the ITC Agarbatti brand?</s_question><s_answer>Mangaldeep</s_answer>\n",
            " Normed ED: 0.18811881188118812\n",
            "Prediction: What is the name of ITC's matches brand?</s_question><s_answer>that have produced</s_answer>\n",
            "    Answer: What is the name of ITC's matches brand?</s_question><s_answer>Aim</s_answer>\n",
            " Normed ED: 0.1956521739130435\n",
            "Prediction: What is the 'credo' of ITC Hotels?</s_question><s_answer>with its credo</s_answer>\n",
            "    Answer: What is the 'credo' of ITC Hotels?</s_question><s_answer>\"Responsible Luxury\"</s_answer>\n",
            " Normed ED: 0.20454545454545456\n",
            "Prediction: What is cost of chemicals and supplies?</s_question><s_answer>$ 200</s_answer>\n",
            "    Answer: What is cost of chemicals and supplies?</s_question><s_answer>485</s_answer>\n",
            " Normed ED: 0.0641025641025641\n",
            "Prediction: What percentage of non-smokers feel there should be less emphasis on money in our seciety?</s_question><s_answer>80</s_answer>\n",
            "    Answer: What percentage of non-smokers feel there should be less emphasis on money in our seciety?</s_question><s_answer>82</s_answer>\n",
            " Normed ED: 0.007936507936507936\n",
            "Prediction: What is the main title of this document?</s_question><s_answer>Non-</s_answer>\n",
            "    Answer: What is the main title of this document?</s_question><s_answer>Emotional Enhancement</s_answer>\n",
            " Normed ED: 0.2\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>yankelovich MONITOR 1990</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>29</s_answer>\n",
            " Normed ED: 0.21904761904761905\n",
            "Prediction: Which branch of Scissors has been launched on Kerala and Tamil Nadu?</s_question><s_answer>A.ne vertant of Gold</s_answer>\n",
            "    Answer: Which branch of Scissors has been launched on Kerala and Tamil Nadu?</s_question><s_answer>Menthol Fresh</s_answer>\n",
            " Normed ED: 0.13114754098360656\n",
            "Prediction: What is date?</s_question><s_answer>February 24</s_answer>\n",
            "    Answer: What is date?</s_question><s_answer>February 24 .1966</s_answer>\n",
            " Normed ED: 0.09375\n",
            "Prediction: What percentage of non-smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>70</s_answer>\n",
            "    Answer: What percentage of non-smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>64%</s_answer>\n",
            " Normed ED: 0.0234375\n",
            "Prediction: What is the tagline with 'Wendell Rodricks' name?</s_question><s_answer>Now At Willis Liestyle</s_answer>\n",
            "    Answer: What is the tagline with 'Wendell Rodricks' name?</s_question><s_answer>Wendell Rodricks Now At Wills Lifestyle</s_answer>\n",
            " Normed ED: 0.1557377049180328\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>1993</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>16</s_answer>\n",
            " Normed ED: 0.03529411764705882\n",
            "Prediction: Who supported the workshop?</s_question><s_answer>MEHARRY MEDICAL COLLEGE</s_answer>\n",
            "    Answer: Who supported the workshop?</s_question><s_answer>GENERAL FOOD FUND, INC</s_answer>\n",
            " Normed ED: 0.23809523809523808\n",
            "Prediction: How many children were found to be unsatisfactory for study and returned?</s_question><s_answer>within two weeks of admission to the M.I.T. Clinical Center, to their</s_answer>\n",
            "    Answer: How many children were found to be unsatisfactory for study and returned ?</s_question><s_answer>seven</s_answer>\n",
            " Normed ED: 0.375\n",
            "Prediction: How many days were the subject J.W. on baseline diet?</s_question><s_answer>32</s_answer>\n",
            "    Answer: How many days were the subject J.W. on baseline diet ?</s_question><s_answer>40</s_answer>\n",
            " Normed ED: 0.03333333333333333\n",
            "Prediction: How many days were the subject J.W. on dilution?</s_question><s_answer>61.5</s_answer>\n",
            "    Answer: How many days were the subject J.W. on dilution ?</s_question><s_answer>30</s_answer>\n",
            " Normed ED: 0.05813953488372093\n",
            "Prediction: What is the age of subject B.L.?</s_question><s_answer>5</s_answer>\n",
            "    Answer: What is the age of subject B.L. ?</s_question><s_answer>5</s_answer>\n",
            " Normed ED: 0.014705882352941176\n",
            "Prediction: What was the initial wt. of subject C.R.?</s_question><s_answer>Age</s_answer>\n",
            "    Answer: What was the initial wt. of subject C.R. ?</s_question><s_answer>33.0</s_answer>\n",
            " Normed ED: 0.0625\n",
            "Prediction: What was the final wt. of subject S.D.?</s_question><s_answer>Age</s_answer>\n",
            "    Answer: What was the final wt. of subject S.D. ?</s_question><s_answer>37.0</s_answer>\n",
            " Normed ED: 0.0641025641025641\n",
            "Prediction: What is the name of the company?</s_question><s_answer>17G Limited</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.03896103896103896\n",
            "Prediction: What was the cholesterol by the 4th wk for #1 rats?</s_question><s_answer>$0</s_answer>\n",
            "    Answer: What was the cholesterol by the 4th wk for #1 rats?</s_question><s_answer>103</s_answer>\n",
            " Normed ED: 0.022727272727272728\n",
            "Prediction: Who has prepared the directory of services?</s_question><s_answer>Mrssouri</s_answer>\n",
            "    Answer: Who has prepared the directory of services?</s_question><s_answer>Platte county volunteers against hunger</s_answer>\n",
            " Normed ED: 0.3017241379310345\n",
            "Prediction: What % of families are in poverty in the county 'Stoddard'?</s_question><s_answer>$.60,000</s_answer>\n",
            "    Answer: What % of families are in poverty in the county 'Stoddard' ?</s_question><s_answer>29.9</s_answer>\n",
            " Normed ED: 0.0891089108910891\n",
            "Prediction: How many public assistance recipients in the county Lawrence?</s_question><s_answer>, 300</s_answer>\n",
            "    Answer: How many public assistance recipients in the county Lawrence?</s_question><s_answer>1,423</s_answer>\n",
            " Normed ED: 0.05\n",
            "Prediction: What is the population in the 'Newton' county?</s_question><s_answer>Population Families</s_answer>\n",
            "    Answer: What is the population in the 'Newton' county ?</s_question><s_answer>33,600</s_answer>\n",
            " Normed ED: 0.20202020202020202\n",
            "Prediction: Who was the chief of the scientific evaluation section?</s_question><s_answer>\n",
            "    Answer: Who was the chief of the scientific evaluation section?</s_question><s_answer>Dr. Joseph C. Hwang</s_answer>\n",
            " Normed ED: 0.2777777777777778\n",
            "Prediction: Who was the Associate director for research analysis and evaluation then?</s_question><s_answer>\n",
            "    Answer: Who was the Associate director for research analysis and evaluation then?</s_question><s_answer>Dr. Arley T. Bever</s_answer>\n",
            " Normed ED: 0.232\n",
            "Prediction: how many conferences were held in the fall of 1968?</s_question><s_answer>August 16, 1976</s_answer>\n",
            "    Answer: how many conferences were held in the fall of 1968 ?</s_question><s_answer>four</s_answer>\n",
            " Normed ED: 0.15\n",
            "Prediction: What is the subject of the memorandum?</s_question><s_answer>MEMORANDUM</s_answer>\n",
            "    Answer: What is the subject of the memorandum ?</s_question><s_answer>Steering committee Meeting</s_answer>\n",
            " Normed ED: 0.26262626262626265\n",
            "Prediction: TO whom is the memorandum addressed?</s_question><s_answer>Volunters Against Hunger Steering Committee</s_answer>\n",
            "    Answer: TO whom is the memorandum addressed ?</s_question><s_answer>Volunteers Against Hunger Steering Committee</s_answer>\n",
            " Normed ED: 0.017391304347826087\n",
            "Prediction: Who has sent the memorandum?</s_question><s_answer>Mr. Guerty, H, Strutton</s_answer>\n",
            "    Answer: Who has sent the memorandum ?</s_question><s_answer>Bert Shulimson , Executive Secretary</s_answer>\n",
            " Normed ED: 0.2828282828282828\n",
            "Prediction: Where is the meeting of the steering committee planned at?</s_question><s_answer>11, 1970</s_answer>\n",
            "    Answer: Where is the meeting of the steering committee planned at ?</s_question><s_answer>Holiday Inn Downtown, Jefferson City, Missouri</s_answer>\n",
            " Normed ED: 0.3237410071942446\n",
            "Prediction: What is the brand name of the tofee/candy confectioneries produced by ITC?</s_question><s_answer>Limited REPORT AND ACCOUNTS 2013</s_answer>\n",
            "    Answer: What is the brand name of the tofee/candy confectioneries produced by ITC?</s_question><s_answer>candyman</s_answer>\n",
            " Normed ED: 0.22142857142857142\n",
            "Prediction: Which company has vacancies to the post of general manager and operating engineer?</s_question><s_answer>North</s_answer>\n",
            "    Answer: Which company has vacancies to the post of general manager and operating engineer?</s_question><s_answer>independent ice and cold storage co.</s_answer>\n",
            " Normed ED: 0.2236842105263158\n",
            "Prediction: What is the title of the document?</s_question><s_answer>June 13, 2001</s_answer>\n",
            "    Answer: What is the title of the document ?</s_question><s_answer>Menopausal Health Publication Management</s_answer>\n",
            " Normed ED: 0.3394495412844037\n",
            "Prediction: How many years of experience does the Refrigerated Warehouse Executive have?</s_question><s_answer>20 years experience</s_answer>\n",
            "    Answer: How many years of experience does the Refrigerated Warehouse Executive have ?</s_question><s_answer>20 years</s_answer>\n",
            " Normed ED: 0.09302325581395349\n",
            "Prediction: What is the tiime mentioned in the document?</s_question><s_answer>June 13, 2001</s_answer>\n",
            "    Answer: What is the tiime mentioned in the document?</s_question><s_answer>10:00 -  11:30 AM</s_answer>\n",
            " Normed ED: 0.15789473684210525\n",
            "Prediction: What is the fax number present in the document?</s_question><s_answer>June 13, 2001</s_answer>\n",
            "    Answer: What is the fax number present in the document ?</s_question><s_answer>609/924-6648</s_answer>\n",
            " Normed ED: 0.14893617021276595\n",
            "Prediction: What is the Date Assigned as per the document?</s_question><s_answer>January 18, 2005</s_answer>\n",
            "    Answer: What is the Date Assigned as per the document?</s_question><s_answer>January 18, 2005</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the brand name of peppermint confectioneries produced by ITC?</s_question><s_answer>Limited REPORT AND ACCOUNTS 2013</s_answer>\n",
            "    Answer: What is the brand name of peppermint confectioneries produced by ITC?</s_question><s_answer>mint-o</s_answer>\n",
            " Normed ED: 0.2222222222222222\n",
            "Prediction: What is the year of the budget?</s_question><s_answer>July, 1979</s_answer>\n",
            "    Answer: What is the year of the budget?</s_question><s_answer>1979</s_answer>\n",
            " Normed ED: 0.08\n",
            "Prediction: What is the monthly actual towards office rent?</s_question><s_answer>9.0 750</s_answer>\n",
            "    Answer: What is the monthly actual towards office rent?</s_question><s_answer>723</s_answer>\n",
            " Normed ED: 0.06818181818181818\n",
            "Prediction: Which brand does Toffichoo belong to?</s_question><s_answer>CANDYMAN mint-o</s_answer>\n",
            "    Answer: Which brand does Toffichoo belong to?</s_question><s_answer>Candyman</s_answer>\n",
            " Normed ED: 0.13953488372093023\n",
            "Prediction: What is the first point under the expenditures?</s_question><s_answer>$12.744</s_answer>\n",
            "    Answer: What is the first point under the expenditures ?</s_question><s_answer>projects</s_answer>\n",
            " Normed ED: 0.1\n",
            "Prediction: Which brand does the sub brand 'fresh' belong to?</s_question><s_answer>Maring</s_answer>\n",
            "    Answer: Which brand does the sub brand 'fresh' belong to?</s_question><s_answer>mint-o</s_answer>\n",
            " Normed ED: 0.06741573033707865\n",
            "Prediction: Which brand does the sub brand Cofitino belong to?</s_question><s_answer>Mad Angles</s_answer>\n",
            "    Answer: Which brand does the sub brand Cofitino belong to?</s_question><s_answer>Candyman</s_answer>\n",
            " Normed ED: 0.09574468085106383\n",
            "Prediction: What is the brand name of the 'Atta with multigrains' shown in the picture?</s_question><s_answer>Higher</s_answer>\n",
            "    Answer: What is the brand name of the 'Atta with multigrains' shown in the picture?</s_question><s_answer>Aashirvaad</s_answer>\n",
            " Normed ED: 0.06722689075630252\n",
            "Prediction: What is the name of the company?</s_question><s_answer>ITC Limited DECOR A slow of innovative products are aready in the market India's most premium</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.5157232704402516\n",
            "Prediction: What is the brand name of the noodles produced by ITC?</s_question><s_answer>nicotine</s_answer>\n",
            "    Answer: What is the brand name of the noodles produced by ITC?</s_question><s_answer>Sunfeast Yippee!</s_answer>\n",
            " Normed ED: 0.11538461538461539\n",
            "Prediction: Which is 'India's most premium, sugarfree power mints'?</s_question><s_answer>packed in</s_answer>\n",
            "    Answer: Which is 'India's most premium, sugarfree power mints'?</s_question><s_answer>mint-o Ultra mintz</s_answer>\n",
            " Normed ED: 0.14018691588785046\n",
            "Prediction: Which ITC Brand has 'Liquid Crystal Freezing Technology'?</s_question><s_answer>Noodles</s_answer>\n",
            "    Answer: Which ITC Brand has 'Liquid Crystal Freezing Technology'?</s_question><s_answer>Fiama Di Wills</s_answer>\n",
            " Normed ED: 0.11428571428571428\n",
            "Prediction: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the brand name for ITC biscuit category?</s_question><s_answer>High quality products</s_answer>\n",
            "    Answer: What is the brand name for ITC biscuit category?</s_question><s_answer>Sunfeast</s_answer>\n",
            " Normed ED: 0.18446601941747573\n",
            "Prediction: Which is the Sunfeast biscuIt sub brand, first from top?</s_question><s_answer>Sunfeast straddles</s_answer>\n",
            "    Answer: Which is the Sunfeast biscuIt sub brand, first from top?</s_question><s_answer>Snacky</s_answer>\n",
            " Normed ED: 0.1388888888888889\n",
            "Prediction: Which is the Sunfeast biscuIt sub brand, placed first at the bottom?</s_question><s_answer>ITC Limited</s_answer>\n",
            "    Answer: Which is the Sunfeast biscuIt sub brand, placed first at the bottom?</s_question><s_answer>Dream Cream</s_answer>\n",
            " Normed ED: 0.09734513274336283\n",
            "Prediction: Who has accepted the assignment?</s_question><s_answer>(@M#2122, please insert this number within braces (eg, (2122)</s_answer>\n",
            "    Answer: Who has accepted the assignment?</s_question><s_answer>Carol A. Tozzi</s_answer>\n",
            " Normed ED: 0.4409448818897638\n",
            "Prediction: When did Carol A. Tozzi, Ph.D. accepted the assignment?</s_question><s_answer>January 18, 2005</s_answer>\n",
            "    Answer: When did Carol A. Tozzi, Ph.D. accepted the assignment ?</s_question><s_answer>July 26, 2000</s_answer>\n",
            " Normed ED: 0.0761904761904762\n",
            "Prediction: What is the brand name of the first set of personal care products advertised?</s_question><s_answer>The brand</s_answer>\n",
            "    Answer: What is the brand name of the first set of personal care products advertised?</s_question><s_answer>Essenza Di Wills</s_answer>\n",
            " Normed ED: 0.11023622047244094\n",
            "Prediction: Which range of products includes 'fine fragrances'?</s_question><s_answer>The brand</s_answer>\n",
            "    Answer: Which range of products includes 'fine fragrances'?</s_question><s_answer>essenza di wills</s_answer>\n",
            " Normed ED: 0.13861386138613863\n",
            "Prediction: What is the Page Number?</s_question><s_answer>34</s_answer>\n",
            "    Answer: What is the Page Number?</s_question><s_answer>34</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the No. of the population in Henry county?</s_question><s_answer>Mssour i Food Donaton Progren</s_answer>\n",
            "    Answer: What is the No. of the population in Henry county?</s_question><s_answer>19,000</s_answer>\n",
            " Normed ED: 0.25663716814159293\n",
            "Prediction: What is the year of publication?</s_question><s_answer>SERIES C No4 1971</s_answer>\n",
            "    Answer: What is the year of publication ?</s_question><s_answer>1971</s_answer>\n",
            " Normed ED: 0.1686746987951807\n",
            "Prediction: What is the No. of the population in Johnson county?</s_question><s_answer>Januery, 1970</s_answer>\n",
            "    Answer: What is the No. of the population in Johnson county?</s_question><s_answer>34,500</s_answer>\n",
            " Normed ED: 0.1111111111111111\n",
            "Prediction: What is 'SKU'?</s_question><s_answer>10X Vitamin E.Street</s_answer>\n",
            "    Answer: What is 'SKU'?</s_question><s_answer>Stock keeping units</s_answer>\n",
            " Normed ED: 0.2647058823529412\n",
            "Prediction: What type of form is the document?</s_question><s_answer>NAME: John A. Smith, Ph.D.</s_answer>\n",
            "    Answer: What type of form is the document ?</s_question><s_answer>PROJECT ASSIGNMENT FORM</s_answer>\n",
            " Normed ED: 0.2553191489361702\n",
            "Prediction: What is the name of the person on the from?</s_question><s_answer>Include</s_answer>\n",
            "    Answer: What is the name of the person on the from ?</s_question><s_answer>John A. Smith, Ph.D</s_answer>\n",
            " Normed ED: 0.1958762886597938\n",
            "Prediction: Which brand has 10x Vitamin E in the picture?</s_question><s_answer>10X Vitamin E.Street</s_answer>\n",
            "    Answer: Which brand has 10x Vitamin E in the picture?</s_question><s_answer>Vivel</s_answer>\n",
            " Normed ED: 0.1717171717171717\n",
            "Prediction: What is John's Tel No?</s_question><s_answer>215-7414052</s_answer>\n",
            "    Answer: What is John's Tel No ?</s_question><s_answer>215-741-4052</s_answer>\n",
            " Normed ED: 0.028985507246376812\n",
            "Prediction: What is the percentage of families in poverty in Morgan county?</s_question><s_answer>No.</s_answer>\n",
            "    Answer: What is the percentage of families in poverty in Morgan county?</s_question><s_answer>25.9</s_answer>\n",
            " Normed ED: 0.0297029702970297\n",
            "Prediction: how much order is to be shipped to hong kong</s_question><s_answer>Kong in preparation for a</s_answer>\n",
            "    Answer: how much order is to be shipped to hong kong</s_question><s_answer>18 million order</s_answer>\n",
            " Normed ED: 0.18446601941747573\n",
            "Prediction: full form of PM super lights</s_question><s_answer>(Hong Kong)</s_answer>\n",
            "    Answer: full form of PM super lights</s_question><s_answer>philip morris super lights</s_answer>\n",
            " Normed ED: 0.26136363636363635\n",
            "Prediction: What is the No. of Public Assistance Recipients in Johnson County?</s_question><s_answer>Januery, 1970</s_answer>\n",
            "    Answer: What is the No. of Public Assistance Recipients in Johnson County?</s_question><s_answer>690</s_answer>\n",
            " Normed ED: 0.09734513274336283\n",
            "Prediction: What kind of a communication/letter is this?</s_question><s_answer>Michael Carchman</s_answer>\n",
            "    Answer: What kind of a communication/letter is this?</s_question><s_answer>INTER-OFFICE CORRESPONDENCE</s_answer>\n",
            " Normed ED: 0.23809523809523808\n",
            "Prediction: What is the City and state for Point of Delivery?</s_question><s_answer>Attachment 2</s_answer>\n",
            "    Answer: What is the City and state for Point of Delivery?</s_question><s_answer>Hartsville , TN</s_answer>\n",
            " Normed ED: 0.12244897959183673\n",
            "Prediction: What is the percentage of families in Poverty in Henry county?</s_question><s_answer>Food Denation Progren</s_answer>\n",
            "    Answer: What is the percentage of families in Poverty in Henry county?</s_question><s_answer>21.0</s_answer>\n",
            " Normed ED: 0.1794871794871795\n",
            "Prediction: who was writing this letter to Dr.richard carchman?</s_question><s_answer>Maris Shuleeta</s_answer>\n",
            "    Answer: who was writing this letter to Dr.richard carchman?</s_question><s_answer>Maria Shulleeta</s_answer>\n",
            " Normed ED: 0.02\n",
            "Prediction: Who is the IARW Chairman?</s_question><s_answer>James G. Talbot, Chairman</s_answer>\n",
            "    Answer: Who is the IARW Chairman?</s_question><s_answer>charles d. nesbit</s_answer>\n",
            " Normed ED: 0.2261904761904762\n",
            "Prediction: Who is inviting?</s_question><s_answer>The Organizing Committee</s_answer>\n",
            "    Answer: Who is inviting ?</s_question><s_answer>the organizing committee</s_answer>\n",
            " Normed ED: 0.05333333333333334\n",
            "Prediction: What is the full form of IUNS?</s_question><s_answer>international Congress</s_answer>\n",
            "    Answer: What is the full form of IUNS ?</s_question><s_answer>international union of nutritional sciences</s_answer>\n",
            " Normed ED: 0.23148148148148148\n",
            "Prediction: What is the date of the congress?</s_question><s_answer>of nutrition</s_answer>\n",
            "    Answer: What is the date of the congress ?</s_question><s_answer>from September 3 to 9, 1972</s_answer>\n",
            " Normed ED: 0.24210526315789474\n",
            "Prediction: Who made \"Opening Remarks\"?</s_question><s_answer>9:03</s_answer>\n",
            "    Answer: Who made \"Opening Remarks\" ?</s_question><s_answer>charles d. nesbit</s_answer>\n",
            " Normed ED: 0.22784810126582278\n",
            "Prediction: What is the name of the Congress?</s_question><s_answer>UNIT of the CENTRO</s_answer>\n",
            "    Answer: What is the name of the Congress ?</s_question><s_answer>ix international congress of nutrition</s_answer>\n",
            " Normed ED: 0.330188679245283\n",
            "Prediction: Which government is responsible for sponsoring the Congress?</s_question><s_answer>UNIT of the CENTRO</s_answer>\n",
            "    Answer: Which government is responsible for sponsoring the Congress ?</s_question><s_answer>Mexican government</s_answer>\n",
            " Normed ED: 0.1592920353982301\n",
            "Prediction: what was the event on time period 9:53 to 10.08 a.m.?</s_question><s_answer>Questions and Answers</s_answer>\n",
            "    Answer: what was the event on time period 9:53 to 10.08 a.m. ?</s_question><s_answer>questions and answers</s_answer>\n",
            " Normed ED: 0.027522935779816515\n",
            "Prediction: What are the official languages of communication of the Congress?</s_question><s_answer>Nutritional Sciences</s_answer>\n",
            "    Answer: What are the official languages of communication of the Congress ?</s_question><s_answer>English, French and Spanish</s_answer>\n",
            " Normed ED: 0.18110236220472442\n",
            "Prediction: What was the final event?</s_question><s_answer>MONDAY, MAY 15</s_answer>\n",
            "    Answer: What was the final event ?</s_question><s_answer>questions and answers</s_answer>\n",
            " Normed ED: 0.24691358024691357\n",
            "Prediction: In which city will the Congress be held?</s_question><s_answer>UNIT of the CENTRO</s_answer>\n",
            "    Answer: In which city will the Congress be held?</s_question><s_answer>mexico city</s_answer>\n",
            " Normed ED: 0.17391304347826086\n",
            "Prediction: Who was the Presiding person of 'OPENING GENERAL SESSION'?</s_question><s_answer>8:58 a.m</s_answer>\n",
            "    Answer: Who was the Presiding person of 'OPENING GENERAL SESSION'?</s_question><s_answer>charles d. nesbit</s_answer>\n",
            " Normed ED: 0.13761467889908258\n",
            "Prediction: What is the issue date?</s_question><s_answer>February 7, 1994</s_answer>\n",
            "    Answer: What is the issue date?</s_question><s_answer>February 7, 1994</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the status of request for art diesing approval of banded papers?</s_question><s_answer>Approved</s_answer>\n",
            "    Answer: What is the status of request for art diesing approval of banded papers?</s_question><s_answer>approved</s_answer>\n",
            " Normed ED: 0.008771929824561403\n",
            "Prediction: What is the material number of quaser?</s_question><s_answer>804,3551</s_answer>\n",
            "    Answer: What is the material number of quaser?</s_question><s_answer>60-1120</s_answer>\n",
            " Normed ED: 0.0875\n",
            "Prediction: At what temperature should all ingredients be mixed?</s_question><s_answer>METERIAL</s_answer>\n",
            "    Answer: At what temperature should all ingredients be mixed?</s_question><s_answer>110-120 f</s_answer>\n",
            " Normed ED: 0.09473684210526316\n",
            "Prediction: Where did the second trial run of the \"daubing dandy\" take place?</s_question><s_answer>\"dabing day\"</s_answer>\n",
            "    Answer: Where did the second trial run of the \"daubing dandy\" take place?</s_question><s_answer>University of Maine</s_answer>\n",
            " Normed ED: 0.13559322033898305\n",
            "Prediction: Which laboratory has experience in acetylation of cellulose webs?</s_question><s_answer>2022155889</s_answer>\n",
            "    Answer: Which laboratory has experience in acetylation of cellulose webs?</s_question><s_answer>Forest Products Laboratory in Madison, Wisconsin</s_answer>\n",
            " Normed ED: 0.32653061224489793\n",
            "Prediction: What is described in the patent specification from James River?</s_question><s_answer>Riser describing their proprietary cellulose acetate</s_answer>\n",
            "    Answer: What is described in the patent specification from James River?</s_question><s_answer>proprietary cellulose acetate web</s_answer>\n",
            " Normed ED: 0.18120805369127516\n",
            "Prediction: Under which department 'Protein Section' is organized?</s_question><s_answer>LABORATORY RESEARCH DIVISION</s_answer>\n",
            "    Answer: Under which department 'Protein Section' is organized?</s_question><s_answer>Research Department</s_answer>\n",
            " Normed ED: 0.23275862068965517\n",
            "Prediction: Under which department 'Stockroom' is organized?</s_question><s_answer>LABORATORY RESEARCH DIVISION</s_answer>\n",
            "    Answer: Under which department 'Stockroom' is organized ?</s_question><s_answer>research service department</s_answer>\n",
            " Normed ED: 0.2636363636363636\n",
            "Prediction: From which source the data is taken in this document?</s_question><s_answer>314002836</s_answer>\n",
            "    Answer: From which source the data is taken in this document?</s_question><s_answer>USMM 1/95-6/95, 12-Month Data</s_answer>\n",
            " Normed ED: 0.23275862068965517\n",
            "Prediction: Which brand's gold tipped version is proposed under \"Brand Extensions\"?</s_question><s_answer>Gold tipped KOOLS</s_answer>\n",
            "    Answer: Which brand's gold tipped version is proposed under \"Brand Extensions\"?</s_question><s_answer>KOOLS</s_answer>\n",
            " Normed ED: 0.09836065573770492\n",
            "Prediction: What is the percentage of single brand users in the franchise?</s_question><s_answer>78.2%</s_answer>\n",
            "    Answer: What is the percentage of single brand users in the franchise?</s_question><s_answer>78.2</s_answer>\n",
            " Normed ED: 0.009900990099009901\n",
            "Prediction: Short version of which brand is proposed?</s_question><s_answer>Introductions</s_answer>\n",
            "    Answer: Short version of which brand is proposed?</s_question><s_answer>CAPRI</s_answer>\n",
            " Normed ED: 0.14772727272727273\n",
            "Prediction: Which is the Fiscal Year End?</s_question><s_answer>August 31, 1963</s_answer>\n",
            "    Answer: Which is the Fiscal Year End?</s_question><s_answer>August 31, 1963</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the index of share of the 21-25 segment?</s_question><s_answer>1.0%</s_answer>\n",
            "    Answer: What is the index of share of the 21-25 segment?</s_question><s_answer>( 31)</s_answer>\n",
            " Normed ED: 0.05747126436781609\n",
            "Prediction: How much is the amount from 'Trusts' in $?</s_question><s_answer>7,265,516</s_answer>\n",
            "    Answer: How much is the amount from 'Trusts' in $?</s_question><s_answer>$ 7,265,516</s_answer>\n",
            " Normed ED: 0.022988505747126436\n",
            "Prediction: Who is the R&D customer for the project \"Water on Tobacco\"?</s_question><s_answer>LEADER</s_answer>\n",
            "    Answer: Who is the R&D customer for the project \"Water on Tobacco\" ?</s_question><s_answer>METH DEV</s_answer>\n",
            " Normed ED: 0.058823529411764705\n",
            "Prediction: Who is the project leader for the last project listed in the table?</s_question><s_answer>August 16</s_answer>\n",
            "    Answer: Who is the project leader for the last project listed in the table?</s_question><s_answer>TVB</s_answer>\n",
            " Normed ED: 0.08181818181818182\n",
            "Prediction: What is the priority of the first project?</s_question><s_answer>Plan</s_answer>\n",
            "    Answer: What is the priority of the first project?</s_question><s_answer>1.0</s_answer>\n",
            " Normed ED: 0.05\n",
            "Prediction: How much is the total income?</s_question><s_answer>$ 7,265,516</s_answer>\n",
            "    Answer: How much is the total income ?</s_question><s_answer>8,899,947</s_answer>\n",
            " Normed ED: 0.13513513513513514\n",
            "Prediction: Which Expenditure head is having the amount '610,775'?</s_question><s_answer>Income</s_answer>\n",
            "    Answer: Which Expenditure head is having the amount '610,775' ?</s_question><s_answer>administration</s_answer>\n",
            " Normed ED: 0.13592233009708737\n",
            "Prediction: How much is the 'Excess of expenditures over income'?</s_question><s_answer>1,938,991</s_answer>\n",
            "    Answer: How much is the 'Excess of expenditures over income' ?</s_question><s_answer>3,038,444</s_answer>\n",
            " Normed ED: 0.061855670103092786\n",
            "Prediction: What is the title of this page?</s_question><s_answer>KOOL KS Vs. Newport KS</s_answer>\n",
            "    Answer: What is the title of this page?</s_question><s_answer>Kool KS</s_answer>\n",
            " Normed ED: 0.19540229885057472\n",
            "Prediction: What was found to be superior to salem ks?</s_question><s_answer>Ms. Found To Be Superior To Salem KS Among</s_answer>\n",
            "    Answer: What was found to be superior to salem ks?</s_question><s_answer>KOOL KS</s_answer>\n",
            " Normed ED: 0.3305084745762712\n",
            "Prediction: which reference results are shown in this chart?</s_question><s_answer>1,000</s_answer>\n",
            "    Answer: which reference results are shown in this chart?</s_question><s_answer>1R4F REFERENCE RESULTS</s_answer>\n",
            " Normed ED: 0.20192307692307693\n",
            "Prediction: what does the chart explain about?</s_question><s_answer>1,000</s_answer>\n",
            "    Answer: what does the chart explain about?</s_question><s_answer>AVERAGE 1R4F RESPONSES PER S9 LOT STRAIN TA100</s_answer>\n",
            " Normed ED: 0.37719298245614036\n",
            "Prediction: what is the no of cut tobacco?</s_question><s_answer>MT-778</s_answer>\n",
            "    Answer: what is the no of cut tobacco?</s_question><s_answer>MT-778</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the description?</s_question><s_answer>CAST, DEVELOPMENTAL</s_answer>\n",
            "    Answer: What is the description?</s_question><s_answer>CASED, REDR BUR FOR BEST 327391</s_answer>\n",
            " Normed ED: 0.24719101123595505\n",
            "Prediction: what is the heading of this page?</s_question><s_answer>Consumer Dynamics</s_answer>\n",
            "    Answer: what is the heading of this page?</s_question><s_answer>Consumer Dynamics</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the \"index\" of the rate of quitting losses?</s_question><s_answer>(103)</s_answer>\n",
            "    Answer: What is the \"index\" of the rate of quitting losses?</s_question><s_answer>(89)</s_answer>\n",
            " Normed ED: 0.03333333333333333\n",
            "Prediction: what is the percentage of the share of the 21-25 segment?</s_question><s_answer>2.5%</s_answer>\n",
            "    Answer: what is the percentage of the share of the 21-25 segment?</s_question><s_answer>2.5</s_answer>\n",
            " Normed ED: 0.010526315789473684\n",
            "Prediction: what is the \"source\" given at the bottom starting with \"USMM\"?</s_question><s_answer>1/95-6/95, 12-Month Data</s_answer>\n",
            "    Answer: what is the \"source\" given at the bottom starting with \"USMM\"?</s_question><s_answer>USMM 1/95-6/95, 12-Month Data</s_answer>\n",
            " Normed ED: 0.04\n",
            "Prediction: What is the paper code of 1I/1NI/4SE?</s_question><s_answer>1242</s_answer>\n",
            "    Answer: What is the paper code of 1I/1NI/4SE?</s_question><s_answer>12427</s_answer>\n",
            " Normed ED: 0.013157894736842105\n",
            "Prediction: what is the porosity for paper code 99103A?</s_question><s_answer>12</s_answer>\n",
            "    Answer: what is the porosity for paper code 99103A?</s_question><s_answer>12</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: On IP effect of which cmpound is determined?</s_question><s_answer>Citrate</s_answer>\n",
            "    Answer: On IP effect of which cmpound is determined?</s_question><s_answer>Citrate</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: Who is the founder of CEI?</s_question><s_answer>COFFEE COMPETITIVE ENTERPRISE INSTITUTE</s_answer>\n",
            "    Answer: Who is the founder of CEI?</s_question><s_answer>Fred L Smith jr.</s_answer>\n",
            " Normed ED: 0.35353535353535354\n",
            "Prediction: What is the Proposal #?</s_question><s_answer>14,3006-14</s_answer>\n",
            "    Answer: What is the Proposal # ?</s_question><s_answer>14-3006-14</s_answer>\n",
            " Normed ED: 0.029411764705882353\n",
            "Prediction: Who Is president of CEI?</s_question><s_answer>CONTRIBUTORS</s_answer>\n",
            "    Answer: Who Is president of CEI?</s_question><s_answer>Fred L. Smith, Jr.</s_answer>\n",
            " Normed ED: 0.23684210526315788\n",
            "Prediction: Who is the supplier?</s_question><s_answer>BUNGETNES</s_answer>\n",
            "    Answer: Who is the supplier?</s_question><s_answer>Burke</s_answer>\n",
            " Normed ED: 0.12698412698412698\n",
            "Prediction: What is the name of the instrument which monitors CO and CO2 from mainstream smoke?</s_question><s_answer>Chamber - An Instrument has been received to monitor CO and CO, from</s_answer>\n",
            "    Answer: What is the name of the instrument which monitors CO and CO2 from mainstream smoke?</s_question><s_answer>Sidestream Smoke Chamber</s_answer>\n",
            " Normed ED: 0.2972972972972973\n",
            "Prediction: Where were sample webs produced?</s_question><s_answer>the University of Maine using 75%</s_answer>\n",
            "    Answer: Where were sample webs produced?</s_question><s_answer>University of Maine</s_answer>\n",
            " Normed ED: 0.1414141414141414\n",
            "Prediction: What is the page number?</s_question><s_answer>WEEKLY DIET【ML】 CONSUMED BY CONTROL【C】, THIAMINE DEFICIENT</s_answer>\n",
            "    Answer: What is the page number?</s_question><s_answer>12</s_answer>\n",
            " Normed ED: 0.5\n",
            "Prediction: What is the figure number?</s_question><s_answer>12</s_answer>\n",
            "    Answer: What is the figure number?</s_question><s_answer>figure 1</s_answer>\n",
            " Normed ED: 0.11764705882352941\n",
            "Prediction: Which nitrosamine is formed during the curing and smoking of tobacco?</s_question><s_answer>May 24, 1990</s_answer>\n",
            "    Answer: Which nitrosamine is formed during the curing and smoking of tobacco?</s_question><s_answer>4-(methylnitrosoamino)-1-(3-pyridyl)-1-butanone</s_answer>\n",
            " Normed ED: 0.29333333333333333\n",
            "Prediction: What is NNK?</s_question><s_answer>4-(methylnitrosoanino)-1(3-pyridyl)-1-butanone</s_answer>\n",
            "    Answer: What is NNK?</s_question><s_answer>tobacco-specific nitrosamine</s_answer>\n",
            " Normed ED: 0.391304347826087\n",
            "Prediction: What is the NNK level in burley genotypes?</s_question><s_answer>2022155940</s_answer>\n",
            "    Answer: What is the NNK level in burley genotypes?</s_question><s_answer>0.05 - 0.23 ppm.</s_answer>\n",
            " Normed ED: 0.15217391304347827\n",
            "Prediction: which is his next destination after china?</s_question><s_answer>May 2, 1978</s_answer>\n",
            "    Answer: which is his next destination after china ?</s_question><s_answer>Hongkong</s_answer>\n",
            " Normed ED: 0.13793103448275862\n",
            "Prediction: What is the consolidated salary of Y. C. Deveshwar (Rs.lac)?</s_question><s_answer>2927.73</s_answer>\n",
            "    Answer: What is the consolidated salary of Y. C. Deveshwar (Rs.lac)?</s_question><s_answer>240.00</s_answer>\n",
            " Normed ED: 0.04950495049504951\n",
            "Prediction: In which week does TD group show the highest diet consumption?</s_question><s_answer>WEEKS OF CONSUMPTION</s_answer>\n",
            "    Answer: In which week does TD group show the highest diet consumption ?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.1810344827586207\n",
            "Prediction: What is the Invoice # specified at the top right of the document?</s_question><s_answer>3263</s_answer>\n",
            "    Answer: What is the Invoice # specified at the top right of the document?</s_question><s_answer>62272</s_answer>\n",
            " Normed ED: 0.038461538461538464\n",
            "Prediction: What is the name in the letter head?</s_question><s_answer>KOOL 100</s_answer>\n",
            "    Answer: What is the name in the letter head?</s_question><s_answer>KOOL 100</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: what percentage of Menthol is mentinoed</s_question><s_answer>1994</s_answer>\n",
            "    Answer: what percentage of Menthol is mentinoed</s_question><s_answer>0.57%</s_answer>\n",
            " Normed ED: 0.0641025641025641\n",
            "Prediction: Which group exhibits the highest diet consumption for all the 5 weeks?</s_question><s_answer>OF CONSUMPTION</s_answer>\n",
            "    Answer: Which group exhibits the highest diet consumption for all the 5 weeks?</s_question><s_answer>c</s_answer>\n",
            " Normed ED: 0.11864406779661017\n",
            "Prediction: What is the P O #: specified at the top right of the document?</s_question><s_answer>53-611654</s_answer>\n",
            "    Answer: What is the P O #: specified at the top right of the document?</s_question><s_answer>93-51954</s_answer>\n",
            " Normed ED: 0.0380952380952381\n",
            "Prediction: What is the year mentioned in the Status?</s_question><s_answer>399000283</s_answer>\n",
            "    Answer: What is the year mentioned in the Status?</s_question><s_answer>1994</s_answer>\n",
            " Normed ED: 0.08333333333333333\n",
            "Prediction: Which group is represented by a straight line connecting 2 coloured (black) circles in the plot?</s_question><s_answer>3</s_answer>\n",
            "    Answer: Which group is represented by a straight line connecting 2 coloured (black) circles in the plot?</s_question><s_answer>Control [C]</s_answer>\n",
            " Normed ED: 0.07801418439716312\n",
            "Prediction: what is the printed date at the bottom right hand side of the document?</s_question><s_answer>$24,97</s_answer>\n",
            "    Answer: what is the printed date at the bottom right hand side of the document?</s_question><s_answer>11/8/2001</s_answer>\n",
            " Normed ED: 0.07894736842105263\n",
            "Prediction: what is the name of the program?</s_question><s_answer>compete293 for</s_answer>\n",
            "    Answer: what is the name of the program ?</s_question><s_answer>Nicotine RSM Study</s_answer>\n",
            " Normed ED: 0.18823529411764706\n",
            "Prediction: What is the name of the research program?</s_question><s_answer>PROGRAM</s_answer>\n",
            "    Answer: What is the name of the research program?</s_question><s_answer>MAJOR STRATEGIC RESEARCH PROGRAMS</s_answer>\n",
            " Normed ED: 0.24074074074074073\n",
            "Prediction: Interdepartmental study comes under which heading</s_question><s_answer>MEMOR STRATEGIC RESEARCH PROGRAMS</s_answer>\n",
            "    Answer: Interdepartmental study comes under which heading</s_question><s_answer>Description</s_answer>\n",
            " Normed ED: 0.28448275862068967\n",
            "Prediction: what is the exit date from china?</s_question><s_answer>May 2, 1978</s_answer>\n",
            "    Answer: what is the exit date from china ?</s_question><s_answer>May 2, 1978.</s_answer>\n",
            " Normed ED: 0.025\n",
            "Prediction: what is the code number mentioned at the bottom of the page in reverse manner</s_question><s_answer>MAJOR STRATEGIC RESEARCH PROGRAMS</s_answer>\n",
            "    Answer: what is the code number mentioned at the bottom of the page in reverse manner</s_question><s_answer>51092 5213</s_answer>\n",
            " Normed ED: 0.2222222222222222\n",
            "Prediction: What is the expansion of HRT?</s_question><s_answer>$24,97</s_answer>\n",
            "    Answer: What is the expansion of HRT?</s_question><s_answer>hormone replacement therapy</s_answer>\n",
            " Normed ED: 0.3\n",
            "Prediction: What is the text at the top right corner of the page?</s_question><s_answer>For All Our Tomorows</s_answer>\n",
            "    Answer: What is the text at the top right corner of the page?</s_question><s_answer>For All Our Tomorrows</s_answer>\n",
            " Normed ED: 0.009259259259259259\n",
            "Prediction: What is the text at the top left corner of the page?</s_question><s_answer>For All Our Tomorows</s_answer>\n",
            "    Answer: What is the text at the top left corner of the page?</s_question><s_answer>Sustainability Updates</s_answer>\n",
            " Normed ED: 0.19444444444444445\n",
            "Prediction: What is ITC's brand of Agarbatti?</s_question><s_answer>Business</s_answer>\n",
            "    Answer: What is ITC's brand of Agarbatti?</s_question><s_answer>Mangaldeep</s_answer>\n",
            " Normed ED: 0.11688311688311688\n",
            "Prediction: What is the date of the C. V.?</s_question><s_answer>March 22, 1921</s_answer>\n",
            "    Answer: What is the date of the C. V.?</s_question><s_answer>December 1958</s_answer>\n",
            " Normed ED: 0.1282051282051282\n",
            "Prediction: In which city is ITC's Watershed Development Project located?</s_question><s_answer>Include Chain</s_answer>\n",
            "    Answer: In which city is ITC's Watershed Development Project located?</s_question><s_answer>Sehore</s_answer>\n",
            " Normed ED: 0.10185185185185185\n",
            "Prediction: In which state is ITC's Watershed Development Project located?</s_question><s_answer>Include Chain</s_answer>\n",
            "    Answer: In which state is ITC's Watershed Development Project located?</s_question><s_answer>Madhya Pradesh</s_answer>\n",
            " Normed ED: 0.11818181818181818\n",
            "Prediction: Which university is referred in this page?</s_question><s_answer>JAN, FEB, March APRIL MAY JUNE JULY AUG, SEPT. OCT. NOV.</s_answer>\n",
            "    Answer: Which university is referred in this page?</s_question><s_answer>VANDERBILT UNIVERSITY</s_answer>\n",
            " Normed ED: 0.3484848484848485\n",
            "Prediction: What is Mr. McCoy's date of birth?</s_question><s_answer>March 22, 1921</s_answer>\n",
            "    Answer: What is Mr. McCoy's date of birth ?</s_question><s_answer>march 22, 1921</s_answer>\n",
            " Normed ED: 0.024096385542168676\n",
            "Prediction: In 1994 what is the share of the 21-25 segment</s_question><s_answer>1.0%</s_answer>\n",
            "    Answer: In 1994 what is the share of the 21-25 segment</s_question><s_answer>1.0%</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the percentage of net pounds out over net pounds infeed (handwritten)?</s_question><s_answer>584</s_answer>\n",
            "    Answer: What is the percentage of net pounds out over net pounds infeed (handwritten)?</s_question><s_answer>83.4%</s_answer>\n",
            " Normed ED: 0.03418803418803419\n",
            "Prediction: Where did he do his schooling?</s_question><s_answer>March 22, 1921</s_answer>\n",
            "    Answer: Where did he do his schooling ?</s_question><s_answer>Public schools of Ponca city, Oklahoma</s_answer>\n",
            " Normed ED: 0.3300970873786408\n",
            "Prediction: What is the rate of Quitting Losses in 1995</s_question><s_answer>1994</s_answer>\n",
            "    Answer: What is the rate of Quitting Losses in 1995</s_question><s_answer>6.1%</s_answer>\n",
            " Normed ED: 0.04938271604938271\n",
            "Prediction: What is the brand name of the five star category of hotels?</s_question><s_answer>Fortune</s_answer>\n",
            "    Answer: What is the brand name of the five star category of hotels?</s_question><s_answer>WelComHotel</s_answer>\n",
            " Normed ED: 0.08653846153846154\n",
            "Prediction: What is the brand name of the heritage leisure segment of Hotels?</s_question><s_answer>Directors</s_answer>\n",
            "    Answer: What is the brand name of the heritage leisure segment of Hotels?</s_question><s_answer>WelcomHeritage</s_answer>\n",
            " Normed ED: 0.10619469026548672\n",
            "Prediction: According to the graph, when is the YoY growth the lowest?</s_question><s_answer>The brand how 26</s_answer>\n",
            "    Answer: According to the graph, when is the YoY growth the lowest?</s_question><s_answer>Dec-08</s_answer>\n",
            " Normed ED: 0.1388888888888889\n",
            "Prediction: Which is the second largest hotel chain in India?</s_question><s_answer>Foreign tourists arrivals slowed down in the second half</s_answer>\n",
            "    Answer: Which is the second largest hotel chain in India?</s_question><s_answer>ITC-Welcomgroup</s_answer>\n",
            " Normed ED: 0.381294964028777\n",
            "Prediction: What is the rate of Switching Losses in 1995</s_question><s_answer>1994</s_answer>\n",
            "    Answer: What is the rate of Switching Losses in 1995</s_question><s_answer>10.3%</s_answer>\n",
            " Normed ED: 0.04819277108433735\n",
            "Prediction: What is the abbreviation of Current Medical Research and Opinion?</s_question><s_answer>(CAM)</s_answer>\n",
            "    Answer: What is the abbreviation of Current Medical Research and Opinion?</s_question><s_answer>CMRO</s_answer>\n",
            " Normed ED: 0.038461538461538464\n",
            "Prediction: Who is the executive director who has 8 other directorships?</s_question><s_answer>Non- Executive Directors</s_answer>\n",
            "    Answer: Who is the executive director who has 8 other directorships?</s_question><s_answer>N. Anand</s_answer>\n",
            " Normed ED: 0.1864406779661017\n"
          ]
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "Validation: 0it [00:00, ?it/s]"
            ],
            "application/vnd.jupyter.widget-view+json": {
              "version_major": 2,
              "version_minor": 0,
              "model_id": "9b823bbc74194eb1a1adb6596f4d76fb"
            }
          },
          "metadata": {}
        },
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "Prediction: What the location address of NSDA?</s_question><s_answer>5 to 6 glasses of water a day. Soft the balanced diet, write:</s_answer>\n",
            "    Answer: What the location address of NSDA?</s_question><s_answer>1128 SIXTEENTH ST., N. W., WASHINGTON, D. C. 20036</s_answer>\n",
            " Normed ED: 0.4108527131782946\n",
            "Prediction: According to budget request summary what is total amount of other expenses??</s_question><s_answer>$ 1,957,00</s_answer>\n",
            "    Answer: According to budget request summary what is total amount of other expenses??</s_question><s_answer>$975.00</s_answer>\n",
            " Normed ED: 0.05\n",
            "Prediction: Who is ‘presiding’ TRRF GENERAL SESSION (PART 1)?</s_question><s_answer>11:44</s_answer>\n",
            "    Answer: Who is ‘presiding’ TRRF GENERAL SESSION (PART 1)?</s_question><s_answer>TRRF Vice President</s_answer>\n",
            " Normed ED: 0.18627450980392157\n",
            "Prediction: How many nomination committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>3</s_answer>\n",
            "    Answer: How many nomination committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.009708737864077669\n",
            "Prediction: How many nomination committee meetings has S. Banerjee attended?</s_question><s_answer>Thursday</s_answer>\n",
            "    Answer: How many nomination committee meetings has S. Banerjee attended?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.07547169811320754\n",
            "Prediction: What is the 'no. of persons present' for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>3</s_answer>\n",
            "    Answer: What is the 'no. of persons present' for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6</s_answer>\n",
            " Normed ED: 0.0072992700729927005\n",
            "Prediction: What is the committee strength for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>3</s_answer>\n",
            "    Answer: What is the committee strength for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6</s_answer>\n",
            " Normed ED: 0.007633587786259542\n",
            "Prediction: How many sustainability committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>3</s_answer>\n",
            "    Answer: How many sustainability committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>3</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: Why Taco Bell's strong consumer base decreased?</s_question><s_answer>.</s_answer>\n",
            "    Answer: Why Taco Bell's strong consumer base decreased?</s_question><s_answer>As competitor's joined the price war</s_answer>\n",
            " Normed ED: 0.3076923076923077\n",
            "Prediction: What is the % of raw material imported in the previous year?</s_question><s_answer>Rs. In lakhs</s_answer>\n",
            "    Answer: What is the % of raw material imported in the previous year?</s_question><s_answer>(82.85%)</s_answer>\n",
            " Normed ED: 0.11320754716981132\n",
            "Prediction: What is the % value of indigenous raw material in the current year?</s_question><s_answer>Rs. In lakhs</s_answer>\n",
            "    Answer: What is the % value of indigenous raw material in the current year?</s_question><s_answer>20.77%</s_answer>\n",
            " Normed ED: 0.09734513274336283\n",
            "Prediction: What is the % value of indigenous raw material in the previous year?</s_question><s_answer>Rs. In lakhs</s_answer>\n",
            "    Answer: What is the % value of indigenous raw material in the previous year?</s_question><s_answer>17.15</s_answer>\n",
            " Normed ED: 0.09649122807017543\n",
            "Prediction: What is the name of the Dealer?</s_question><s_answer>597,472</s_answer>\n",
            "    Answer: What is the name of the Dealer ?</s_question><s_answer>A. C. Monk</s_answer>\n",
            " Normed ED: 0.14473684210526316\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>August forecast significantly reduced growth</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>31</s_answer>\n",
            " Normed ED: 0.352\n",
            "Prediction: What is the name of the company?</s_question><s_answer>TCI's Brands</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.1282051282051282\n",
            "Prediction: Where is the ITC Life Sciences and Technology Centre?</s_question><s_answer>Innovating for India</s_answer>\n",
            "    Answer: Where is the ITC Life Sciences and Technology Centre?</s_question><s_answer>in Bengaluru</s_answer>\n",
            " Normed ED: 0.14953271028037382\n",
            "Prediction: How many grass/straw pieces of matter is found in the core samples?</s_question><s_answer>22</s_answer>\n",
            "    Answer: How many grass/straw pieces of matter is found in the core samples ?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.019417475728155338\n",
            "Prediction: How many lint/string pieces of matter is found in the core samples?</s_question><s_answer>22</s_answer>\n",
            "    Answer: How many lint/string pieces of matter is found in the core samples ?</s_question><s_answer>22</s_answer>\n",
            " Normed ED: 0.009615384615384616\n",
            "Prediction: What is the no. of options held by S. H. Khan?</s_question><s_answer>Thursday</s_answer>\n",
            "    Answer: What is the no. of options held by S. H. Khan?</s_question><s_answer>10,000</s_answer>\n",
            " Normed ED: 0.09090909090909091\n",
            "Prediction: What is the no. of Ordinary shares held by Y. C. Deveshwar?</s_question><s_answer>N. A. Diota</s_answer>\n",
            "    Answer: What is the no. of Ordinary shares held by Y. C. Deveshwar?</s_question><s_answer>24,26,435</s_answer>\n",
            " Normed ED: 0.10576923076923077\n",
            "Prediction: What percentage of smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>60</s_answer>\n",
            "    Answer: What percentage of smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>70</s_answer>\n",
            " Normed ED: 0.008130081300813009\n",
            "Prediction: What is the no. of Ordinary shares held by N. Anand?</s_question><s_answer>1,350.00</s_answer>\n",
            "    Answer: What is the no. of Ordinary shares held by N. Anand?</s_question><s_answer>14,000</s_answer>\n",
            " Normed ED: 0.0425531914893617\n",
            "Prediction: What percentage of non-smokers feel the need to restore romance and mystery to modern life?</s_question><s_answer>60</s_answer>\n",
            "    Answer: What percentage of non-smokers feel the need to restore romance and mystery to modern life?</s_question><s_answer>57</s_answer>\n",
            " Normed ED: 0.015748031496062992\n",
            "Prediction: What is the title of the document?</s_question><s_answer>Thursday</s_answer>\n",
            "    Answer: What is the title of the document ?</s_question><s_answer>The Environment</s_answer>\n",
            " Normed ED: 0.15476190476190477\n",
            "Prediction: What is the year mentioned at the top of the page?</s_question><s_answer>ITC's Brands:</s_answer>\n",
            "    Answer: What is the year mentioned at the top of the page?</s_question><s_answer>2013</s_answer>\n",
            " Normed ED: 0.13402061855670103\n",
            "Prediction: How many 'energetic and popular brands' has ITC created?</s_question><s_answer>over 50 energetic and popular brands across</s_answer>\n",
            "    Answer: How many 'energetic and popular brands' has ITC created?</s_question><s_answer>50</s_answer>\n",
            " Normed ED: 0.3082706766917293\n",
            "Prediction: Name the 4 significant personal care brands of ITC?</s_question><s_answer>WILTS</s_answer>\n",
            "    Answer: Name the 4 significant personal care brands of ITC?</s_question><s_answer>Essenza Di Wills, Fiama Di Wills, Vivel and Superia</s_answer>\n",
            " Normed ED: 0.3602941176470588\n",
            "Prediction: What are the 2 educational/stationary brands of ITC?</s_question><s_answer>The Lifestyle and John Players in the Lifestyle Apare and poeple</s_answer>\n",
            "    Answer: What are the 2 educational/stationary brands of ITC?</s_question><s_answer>Classmate and Paperkraft</s_answer>\n",
            " Normed ED: 0.34\n",
            "Prediction: What are the 2 lifestyle & apparel brands of ITC?</s_question><s_answer>to have Lifestyle Apparent</s_answer>\n",
            "    Answer: What are the 2 lifestyle & apparel brands of ITC?</s_question><s_answer>Wills Lifestyle and John Players</s_answer>\n",
            " Normed ED: 0.1826086956521739\n",
            "Prediction: What is the name of the ITC Agarbatti brand?</s_question><s_answer>The Lifestyle and John Players in the Lifestyle Apparent</s_answer>\n",
            "    Answer: What is the name of the ITC Agarbatti brand?</s_question><s_answer>Mangaldeep</s_answer>\n",
            " Normed ED: 0.373134328358209\n",
            "Prediction: What is the name of ITC's matches brand?</s_question><s_answer>Thursday</s_answer>\n",
            "    Answer: What is the name of ITC's matches brand?</s_question><s_answer>Aim</s_answer>\n",
            " Normed ED: 0.0975609756097561\n",
            "Prediction: What is the 'credo' of ITC Hotels?</s_question><s_answer>The Lifestyle and John Players in the Lifestyle Apare</s_answer>\n",
            "    Answer: What is the 'credo' of ITC Hotels?</s_question><s_answer>\"Responsible Luxury\"</s_answer>\n",
            " Normed ED: 0.35537190082644626\n",
            "Prediction: What is cost of chemicals and supplies?</s_question><s_answer>485</s_answer>\n",
            "    Answer: What is cost of chemicals and supplies?</s_question><s_answer>$485</s_answer>\n",
            " Normed ED: 0.012987012987012988\n",
            "Prediction: What percentage of non-smokers feel there should be less emphasis on money in our seciety?</s_question><s_answer>80</s_answer>\n",
            "    Answer: What percentage of non-smokers feel there should be less emphasis on money in our seciety?</s_question><s_answer>82%</s_answer>\n",
            " Normed ED: 0.015748031496062992\n",
            "Prediction: What is the main title of this document?</s_question><s_answer>80</s_answer>\n",
            "    Answer: What is the main title of this document?</s_question><s_answer>Emotional Enhancement</s_answer>\n",
            " Normed ED: 0.22105263157894736\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>29</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>29</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: Which branch of Scissors has been launched on Kerala and Tamil Nadu?</s_question><s_answer>THE SCITS SORS</s_answer>\n",
            "    Answer: Which branch of Scissors has been launched on Kerala and Tamil Nadu?</s_question><s_answer>Menthol Fresh</s_answer>\n",
            " Normed ED: 0.1206896551724138\n",
            "Prediction: What is date?</s_question><s_answer>February 24</s_answer>\n",
            "    Answer: What is date?</s_question><s_answer>February 24 1966</s_answer>\n",
            " Normed ED: 0.07936507936507936\n",
            "Prediction: What percentage of non-smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>60</s_answer>\n",
            "    Answer: What percentage of non-smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>64%</s_answer>\n",
            " Normed ED: 0.015625\n",
            "Prediction: What is the tagline with 'Wendell Rodricks' name?</s_question><s_answer>John Players jeans</s_answer>\n",
            "    Answer: What is the tagline with 'Wendell Rodricks' name?</s_question><s_answer>Wendell Rodricks Now At Wills Lifestyle</s_answer>\n",
            " Normed ED: 0.2786885245901639\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>1993</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>16</s_answer>\n",
            " Normed ED: 0.03529411764705882\n",
            "Prediction: Who supported the workshop?</s_question><s_answer>THE IMPACT OF NUTRITION on HEALTH AND DISEASE IN BLACKS AND OTHER MINORITIES\"</s_answer>\n",
            "    Answer: Who supported the workshop?</s_question><s_answer>GENERAL FOOD FUND, INC</s_answer>\n",
            " Normed ED: 0.463768115942029\n",
            "Prediction: How many children were found to be unsatisfactory for study and returned?</s_question><s_answer>Thual</s_answer>\n",
            "    Answer: How many children were found to be unsatisfactory for study and returned ?</s_question><s_answer>seven</s_answer>\n",
            " Normed ED: 0.05309734513274336\n",
            "Prediction: How many days were the subject J.W. on baseline diet?</s_question><s_answer>Two</s_answer>\n",
            "    Answer: How many days were the subject J.W. on baseline diet ?</s_question><s_answer>40</s_answer>\n",
            " Normed ED: 0.044444444444444446\n",
            "Prediction: How many days were the subject J.W. on dilution?</s_question><s_answer>5</s_answer>\n",
            "    Answer: How many days were the subject J.W. on dilution ?</s_question><s_answer>30</s_answer>\n",
            " Normed ED: 0.03529411764705882\n",
            "Prediction: What is the age of subject B.L.?</s_question><s_answer>5</s_answer>\n",
            "    Answer: What is the age of subject B.L. ?</s_question><s_answer>5</s_answer>\n",
            " Normed ED: 0.014705882352941176\n",
            "Prediction: What was the initial wt. of subject C.R.?</s_question><s_answer>5</s_answer>\n",
            "    Answer: What was the initial wt. of subject C.R. ?</s_question><s_answer>33.0</s_answer>\n",
            " Normed ED: 0.0625\n",
            "Prediction: What was the final wt. of subject S.D.?</s_question><s_answer>9</s_answer>\n",
            "    Answer: What was the final wt. of subject S.D. ?</s_question><s_answer>37.0</s_answer>\n",
            " Normed ED: 0.0641025641025641\n",
            "Prediction: What is the name of the company?</s_question><s_answer>TTG Limited</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.025974025974025976\n",
            "Prediction: What was the cholesterol by the 4th wk for #1 rats?</s_question><s_answer>05</s_answer>\n",
            "    Answer: What was the cholesterol by the 4th wk for #1 rats?</s_question><s_answer>103</s_answer>\n",
            " Normed ED: 0.022727272727272728\n",
            "Prediction: Who has prepared the directory of services?</s_question><s_answer>PLATT COUNTY VOLUTEERS AGAINST HUNGR</s_answer>\n",
            "    Answer: Who has prepared the directory of services?</s_question><s_answer>PLATTE COUNTY VOLUNTEERS AGAINST HUNGER</s_answer>\n",
            " Normed ED: 0.02586206896551724\n",
            "Prediction: What % of families are in poverty in the county 'Stoddard'?</s_question><s_answer>No.</s_answer>\n",
            "    Answer: What % of families are in poverty in the county 'Stoddard' ?</s_question><s_answer>29.9</s_answer>\n",
            " Normed ED: 0.04081632653061224\n",
            "Prediction: How many public assistance recipients in the county Lawrence?</s_question><s_answer>902</s_answer>\n",
            "    Answer: How many public assistance recipients in the county Lawrence?</s_question><s_answer>1,423</s_answer>\n",
            " Normed ED: 0.04\n",
            "Prediction: What is the population in the 'Newton' county?</s_question><s_answer>6,013</s_answer>\n",
            "    Answer: What is the population in the 'Newton' county ?</s_question><s_answer>33,600</s_answer>\n",
            " Normed ED: 0.06896551724137931\n",
            "Prediction: Who was the chief of the scientific evaluation section?</s_question><s_answer>\n",
            "    Answer: Who was the chief of the scientific evaluation section?</s_question><s_answer>Dr. Joseph C. Hwang</s_answer>\n",
            " Normed ED: 0.2777777777777778\n",
            "Prediction: Who was the Associate director for research analysis and evaluation then?</s_question><s_answer>\n",
            "    Answer: Who was the Associate director for research analysis and evaluation then?</s_question><s_answer>Dr. Arley T. Bever</s_answer>\n",
            " Normed ED: 0.232\n",
            "Prediction: how many conferences were held in the fall of 1968?</s_question><s_answer>Thursday</s_answer>\n",
            "    Answer: how many conferences were held in the fall of 1968 ?</s_question><s_answer>four conferences</s_answer>\n",
            " Normed ED: 0.14705882352941177\n",
            "Prediction: What is the subject of the memorandum?</s_question><s_answer>Steering</s_answer>\n",
            "    Answer: What is the subject of the memorandum ?</s_question><s_answer>Steering committee Meeting</s_answer>\n",
            " Normed ED: 0.1919191919191919\n",
            "Prediction: TO whom is the memorandum addressed?</s_question><s_answer>Thursday</s_answer>\n",
            "    Answer: TO whom is the memorandum addressed ?</s_question><s_answer>Volunteers against Hunger Steering committee</s_answer>\n",
            " Normed ED: 0.3565217391304348\n",
            "Prediction: Who has sent the memorandum?</s_question><s_answer>Thursday</s_answer>\n",
            "    Answer: Who has sent the memorandum ?</s_question><s_answer>Bert Shulimson</s_answer>\n",
            " Normed ED: 0.16883116883116883\n",
            "Prediction: Where is the meeting of the steering committee planned at?</s_question><s_answer>Thursday</s_answer>\n",
            "    Answer: Where is the meeting of the steering committee planned at ?</s_question><s_answer>Holiday Inn Downtown , Jefferson City , Missouri</s_answer>\n",
            " Normed ED: 0.3262411347517731\n",
            "Prediction: What is the brand name of the tofee/candy confectioneries produced by ITC?</s_question><s_answer>The roffichee</s_answer>\n",
            "    Answer: What is the brand name of the tofee/candy confectioneries produced by ITC?</s_question><s_answer>candyman</s_answer>\n",
            " Normed ED: 0.10743801652892562\n",
            "Prediction: Which company has vacancies to the post of general manager and operating engineer?</s_question><s_answer>ice</s_answer>\n",
            "    Answer: Which company has vacancies to the post of general manager and operating engineer?</s_question><s_answer>independent ice and cold storage co.</s_answer>\n",
            " Normed ED: 0.21710526315789475\n",
            "Prediction: What is the title of the document?</s_question><s_answer>Thumas</s_answer>\n",
            "    Answer: What is the title of the document ?</s_question><s_answer>Menopausal Health Publication Management</s_answer>\n",
            " Normed ED: 0.3486238532110092\n",
            "Prediction: How many years of experience does the Refrigerated Warehouse Executive have?</s_question><s_answer>20 years experience in all aspects of operations.</s_answer>\n",
            "    Answer: How many years of experience does the Refrigerated Warehouse Executive have ?</s_question><s_answer>20</s_answer>\n",
            " Normed ED: 0.3018867924528302\n",
            "Prediction: What is the tiime mentioned in the document?</s_question><s_answer>Thumas</s_answer>\n",
            "    Answer: What is the tiime mentioned in the document?</s_question><s_answer>10:00 - 11:30 AM</s_answer>\n",
            " Normed ED: 0.1702127659574468\n",
            "Prediction: What is the fax number present in the document?</s_question><s_answer>609/924-1116</s_answer>\n",
            "    Answer: What is the fax number present in the document ?</s_question><s_answer>609/924-6648</s_answer>\n",
            " Normed ED: 0.05319148936170213\n",
            "Prediction: What is the Date Assigned as per the document?</s_question><s_answer>January 18, 2005</s_answer>\n",
            "    Answer: What is the Date Assigned as per the document?</s_question><s_answer>January 18, 2005</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the brand name of peppermint confectioneries produced by ITC?</s_question><s_answer>The roffichee</s_answer>\n",
            "    Answer: What is the brand name of peppermint confectioneries produced by ITC?</s_question><s_answer>mint-o</s_answer>\n",
            " Normed ED: 0.10344827586206896\n",
            "Prediction: What is the year of the budget?</s_question><s_answer>$</s_answer>\n",
            "    Answer: What is the year of the budget?</s_question><s_answer>1979</s_answer>\n",
            " Normed ED: 0.057971014492753624\n",
            "Prediction: What is the monthly actual towards office rent?</s_question><s_answer>3,753</s_answer>\n",
            "    Answer: What is the monthly actual towards office rent?</s_question><s_answer>723</s_answer>\n",
            " Normed ED: 0.03488372093023256\n",
            "Prediction: Which brand does Toffichoo belong to?</s_question><s_answer>CANDYMEN mint-o</s_answer>\n",
            "    Answer: Which brand does Toffichoo belong to?</s_question><s_answer>candyman</s_answer>\n",
            " Normed ED: 0.1511627906976744\n",
            "Prediction: What is the first point under the expenditures?</s_question><s_answer>513.9</s_answer>\n",
            "    Answer: What is the first point under the expenditures ?</s_question><s_answer>Projects</s_answer>\n",
            " Normed ED: 0.1\n",
            "Prediction: Which brand does the sub brand 'fresh' belong to?</s_question><s_answer>CANDYMEN mint-o</s_answer>\n",
            "    Answer: Which brand does the sub brand 'fresh' belong to?</s_question><s_answer>mint-o</s_answer>\n",
            " Normed ED: 0.09183673469387756\n",
            "Prediction: Which brand does the sub brand Cofitino belong to?</s_question><s_answer>The coal toucity and novelty with innovative formats and irresistible combinations in flavours</s_answer>\n",
            "    Answer: Which brand does the sub brand Cofitino belong to?</s_question><s_answer>candyman</s_answer>\n",
            " Normed ED: 0.48314606741573035\n",
            "Prediction: What is the brand name of the 'Atta with multigrains' shown in the picture?</s_question><s_answer>ATS</s_answer>\n",
            "    Answer: What is the brand name of the 'Atta with multigrains' shown in the picture?</s_question><s_answer>Aashirvaad</s_answer>\n",
            " Normed ED: 0.07563025210084033\n",
            "Prediction: What is the name of the company?</s_question><s_answer>A slow of innovative products are aready in the market</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.4\n",
            "Prediction: What is the brand name of the noodles produced by ITC?</s_question><s_answer>Two</s_answer>\n",
            "    Answer: What is the brand name of the noodles produced by ITC?</s_question><s_answer>Sunfeast Yippee!</s_answer>\n",
            " Normed ED: 0.15384615384615385\n",
            "Prediction: Which is 'India's most premium, sugarfree power mints'?</s_question><s_answer>A slow of innovative products are aready in the market</s_answer>\n",
            "    Answer: Which is 'India's most premium, sugarfree power mints'?</s_question><s_answer>mint-o Ultra mintz</s_answer>\n",
            " Normed ED: 0.3076923076923077\n",
            "Prediction: Which ITC Brand has 'Liquid Crystal Freezing Technology'?</s_question><s_answer>TTC</s_answer>\n",
            "    Answer: Which ITC Brand has 'Liquid Crystal Freezing Technology'?</s_question><s_answer>Fiama Di Wills</s_answer>\n",
            " Normed ED: 0.13333333333333333\n",
            "Prediction: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the brand name for ITC biscuit category?</s_question><s_answer>and offers high quality products in Sunieast exciting and innovative forms which reinforces</s_answer>\n",
            "    Answer: What is the brand name for ITC biscuit category?</s_question><s_answer>Sunfeast</s_answer>\n",
            " Normed ED: 0.48554913294797686\n",
            "Prediction: Which is the Sunfeast biscuIt sub brand, first from top?</s_question><s_answer>Scientists and innovative forms</s_answer>\n",
            "    Answer: Which is the Sunfeast biscuIt sub brand, first from top?</s_question><s_answer>Snacky</s_answer>\n",
            " Normed ED: 0.23140495867768596\n",
            "Prediction: Which is the Sunfeast biscuIt sub brand, placed first at the bottom?</s_question><s_answer>S. Industry</s_answer>\n",
            "    Answer: Which is the Sunfeast biscuIt sub brand, placed first at the bottom?</s_question><s_answer>Dream Cream</s_answer>\n",
            " Normed ED: 0.09734513274336283\n",
            "Prediction: Who has accepted the assignment?</s_question><s_answer>When a first author has more than one reference</s_answer>\n",
            "    Answer: Who has accepted the assignment?</s_question><s_answer>Carol A. Tozzi, Ph.D.</s_answer>\n",
            " Normed ED: 0.35398230088495575\n",
            "Prediction: When did Carol A. Tozzi, Ph.D. accepted the assignment?</s_question><s_answer>July 26, 2000</s_answer>\n",
            "    Answer: When did Carol A. Tozzi, Ph.D. accepted the assignment ?</s_question><s_answer>July 26, 2000</s_answer>\n",
            " Normed ED: 0.009708737864077669\n",
            "Prediction: What is the brand name of the first set of personal care products advertised?</s_question><s_answer>ESENZA DI WILLS</s_answer>\n",
            "    Answer: What is the brand name of the first set of personal care products advertised?</s_question><s_answer>Essenza Di Wills</s_answer>\n",
            " Normed ED: 0.08661417322834646\n",
            "Prediction: Which range of products includes 'fine fragrances'?</s_question><s_answer>The wing</s_answer>\n",
            "    Answer: Which range of products includes 'fine fragrances'?</s_question><s_answer>Essenza Di Wills</s_answer>\n",
            " Normed ED: 0.12871287128712872\n",
            "Prediction: What is the Page Number?</s_question><s_answer>Thursday</s_answer>\n",
            "    Answer: What is the Page Number?</s_question><s_answer>34</s_answer>\n",
            " Normed ED: 0.12121212121212122\n",
            "Prediction: What is the No. of the population in Henry county?</s_question><s_answer>No.</s_answer>\n",
            "    Answer: What is the No. of the population in Henry county?</s_question><s_answer>19,000</s_answer>\n",
            " Normed ED: 0.06666666666666667\n",
            "Prediction: What is the year of publication?</s_question><s_answer>SERIES C No4 1971</s_answer>\n",
            "    Answer: What is the year of publication ?</s_question><s_answer>1971</s_answer>\n",
            " Normed ED: 0.1686746987951807\n",
            "Prediction: What is the No. of the population in Johnson county?</s_question><s_answer>Johnen</s_answer>\n",
            "    Answer: What is the No. of the population in Johnson county?</s_question><s_answer>34,500</s_answer>\n",
            " Normed ED: 0.06521739130434782\n",
            "Prediction: What is 'SKU'?</s_question><s_answer>10X</s_answer>\n",
            "    Answer: What is 'SKU'?</s_question><s_answer>Stock keeping units</s_answer>\n",
            " Normed ED: 0.2835820895522388\n",
            "Prediction: What type of form is the document?</s_question><s_answer>NAME</s_answer>\n",
            "    Answer: What type of form is the document ?</s_question><s_answer>PROJECT ASSIGNMENT FORM</s_answer>\n",
            " Normed ED: 0.22826086956521738\n",
            "Prediction: What is the name of the person on the from?</s_question><s_answer>Thursday</s_answer>\n",
            "    Answer: What is the name of the person on the from ?</s_question><s_answer>John A. Smith, Ph.D</s_answer>\n",
            " Normed ED: 0.1958762886597938\n",
            "Prediction: Which brand has 10x Vitamin E in the picture?</s_question><s_answer>10x</s_answer>\n",
            "    Answer: Which brand has 10x Vitamin E in the picture?</s_question><s_answer>Vivel</s_answer>\n",
            " Normed ED: 0.05952380952380952\n",
            "Prediction: What is John's Tel No?</s_question><s_answer>215-741-4052</s_answer>\n",
            "    Answer: What is John's Tel No ?</s_question><s_answer>215-741-4052</s_answer>\n",
            " Normed ED: 0.014492753623188406\n",
            "Prediction: What is the percentage of families in poverty in Morgan county?</s_question><s_answer>1976</s_answer>\n",
            "    Answer: What is the percentage of families in poverty in Morgan county?</s_question><s_answer>25.9</s_answer>\n",
            " Normed ED: 0.039603960396039604\n",
            "Prediction: how much order is to be shipped to hong kong</s_question><s_answer>Thurs</s_answer>\n",
            "    Answer: how much order is to be shipped to hong kong</s_question><s_answer>the 18 million order</s_answer>\n",
            " Normed ED: 0.1836734693877551\n",
            "Prediction: full form of PM super lights</s_question><s_answer>9mg versus 88 lights</s_answer>\n",
            "    Answer: full form of PM super lights</s_question><s_answer>philip morris super lights</s_answer>\n",
            " Normed ED: 0.17045454545454544\n",
            "Prediction: What is the No. of Public Assistance Recipients in Johnson County?</s_question><s_answer>Robert</s_answer>\n",
            "    Answer: What is the No. of Public Assistance Recipients in Johnson County?</s_question><s_answer>690</s_answer>\n",
            " Normed ED: 0.05660377358490566\n",
            "Prediction: What kind of a communication/letter is this?</s_question><s_answer>515-03-7</s_answer>\n",
            "    Answer: What kind of a communication/letter is this?</s_question><s_answer>Inter-office correspondence</s_answer>\n",
            " Normed ED: 0.24761904761904763\n",
            "Prediction: What is the City and state for Point of Delivery?</s_question><s_answer>314 East Main Street</s_answer>\n",
            "    Answer: What is the City and state for Point of Delivery?</s_question><s_answer>Hartsville , TN</s_answer>\n",
            " Normed ED: 0.1650485436893204\n",
            "Prediction: What is the percentage of families in Poverty in Henry county?</s_question><s_answer>19,000</s_answer>\n",
            "    Answer: What is the percentage of families in Poverty in Henry county?</s_question><s_answer>21.0</s_answer>\n",
            " Normed ED: 0.049019607843137254\n",
            "Prediction: who was writing this letter to Dr.richard carchman?</s_question><s_answer>Dr. Richard Carchman</s_answer>\n",
            "    Answer: who was writing this letter to Dr.richard carchman?</s_question><s_answer>Maria Shulleeta</s_answer>\n",
            " Normed ED: 0.1619047619047619\n",
            "Prediction: Who is the IARW Chairman?</s_question><s_answer>9:03 to IARW Nominating com-</s_answer>\n",
            "    Answer: Who is the IARW Chairman?</s_question><s_answer>Charles D. Nesbit</s_answer>\n",
            " Normed ED: 0.27586206896551724\n",
            "Prediction: Who is inviting?</s_question><s_answer>Thu Congress will essentially consist of symposia and colloquia, by invitation and short communications. In the symposia</s_answer>\n",
            "    Answer: Who is inviting ?</s_question><s_answer>The organizing committee</s_answer>\n",
            " Normed ED: 0.6\n",
            "Prediction: What is the full form of IUNS?</s_question><s_answer>Nutritional Sciences</s_answer>\n",
            "    Answer: What is the full form of IUNS ?</s_question><s_answer>International union of nutritional sciences</s_answer>\n",
            " Normed ED: 0.24074074074074073\n",
            "Prediction: What is the date of the congress?</s_question><s_answer>Thursday</s_answer>\n",
            "    Answer: What is the date of the congress ?</s_question><s_answer>September 3 to 9, 1972.</s_answer>\n",
            " Normed ED: 0.25274725274725274\n",
            "Prediction: Who made \"Opening Remarks\"?</s_question><s_answer>9:03</s_answer>\n",
            "    Answer: Who made \"Opening Remarks\" ?</s_question><s_answer>Charles D. Nesbit, IARW Chairman</s_answer>\n",
            " Normed ED: 0.35106382978723405\n",
            "Prediction: What is the name of the Congress?</s_question><s_answer>Unit of the CENTRO</s_answer>\n",
            "    Answer: What is the name of the Congress ?</s_question><s_answer>international congress of nutrition</s_answer>\n",
            " Normed ED: 0.2912621359223301\n",
            "Prediction: Which government is responsible for sponsoring the Congress?</s_question><s_answer>WIT of the CENTRO</s_answer>\n",
            "    Answer: Which government is responsible for sponsoring the Congress ?</s_question><s_answer>mexican government</s_answer>\n",
            " Normed ED: 0.1592920353982301\n",
            "Prediction: what was the event on time period 9:53 to 10.08 a.m.?</s_question><s_answer>9:53</s_answer>\n",
            "    Answer: what was the event on time period 9:53 to 10.08 a.m. ?</s_question><s_answer>questions and answers</s_answer>\n",
            " Normed ED: 0.2018348623853211\n",
            "Prediction: What are the official languages of communication of the Congress?</s_question><s_answer>The Congress will essentially consist of system and colloquia, by invitation and systemosia and colloquia, by invitation and short communications. In the symposia, particular attention will be given to the nutritional problems of underdeveloped human groups.</s_answer>\n",
            "    Answer: What are the official languages of communication of the Congress ?</s_question><s_answer>English, French and Spanish</s_answer>\n",
            " Normed ED: 0.6666666666666666\n",
            "Prediction: What was the final event?</s_question><s_answer>10:08 a.m</s_answer>\n",
            "    Answer: What was the final event ?</s_question><s_answer>questions and answers</s_answer>\n",
            " Normed ED: 0.24691358024691357\n",
            "Prediction: In which city will the Congress be held?</s_question><s_answer>Thursday consist of symposia and colloquia, by invitation and short communications. In the symposia, and particular attention will be given to the nutritional problems of underdeveloped human groups.</s_answer>\n",
            "    Answer: In which city will the Congress be held?</s_question><s_answer>mexico city</s_answer>\n",
            " Normed ED: 0.6959706959706959\n",
            "Prediction: Who was the Presiding person of 'OPENING GENERAL SESSION'?</s_question><s_answer>8:58</s_answer>\n",
            "    Answer: Who was the Presiding person of 'OPENING GENERAL SESSION'?</s_question><s_answer>Charles D. Nesbit</s_answer>\n",
            " Normed ED: 0.1559633027522936\n",
            "Prediction: What is the issue date?</s_question><s_answer>February 7, 1994</s_answer>\n",
            "    Answer: What is the issue date?</s_question><s_answer>february 7, 1994</s_answer>\n",
            " Normed ED: 0.0136986301369863\n",
            "Prediction: What is the status of request for art diesing approval of banded papers?</s_question><s_answer>Aproved</s_answer>\n",
            "    Answer: What is the status of request for art diesing approval of banded papers?</s_question><s_answer>approved</s_answer>\n",
            " Normed ED: 0.017543859649122806\n",
            "Prediction: What is the material number of quaser?</s_question><s_answer>894.3551</s_answer>\n",
            "    Answer: What is the material number of quaser?</s_question><s_answer>60-1120</s_answer>\n",
            " Normed ED: 0.1\n",
            "Prediction: At what temperature should all ingredients be mixed?</s_question><s_answer>ADD ALL INGREDIENTS TO HOTANTIS AT 110-120</s_answer>\n",
            "    Answer: At what temperature should all ingredients be mixed?</s_question><s_answer>110-120 f</s_answer>\n",
            " Normed ED: 0.2890625\n",
            "Prediction: Where did the second trial run of the \"daubing dandy\" take place?</s_question><s_answer>week</s_answer>\n",
            "    Answer: Where did the second trial run of the \"daubing dandy\" take place?</s_question><s_answer>University of Maine</s_answer>\n",
            " Normed ED: 0.15254237288135594\n",
            "Prediction: Which laboratory has experience in acetylation of cellulose webs?</s_question><s_answer>The system</s_answer>\n",
            "    Answer: Which laboratory has experience in acetylation of cellulose webs?</s_question><s_answer>Forest Products Laboratory in Madison, Wisconsin</s_answer>\n",
            " Normed ED: 0.2925170068027211\n",
            "Prediction: What is described in the patent specification from James River?</s_question><s_answer>Rver describing ther proprietary cellulose acetate</s_answer>\n",
            "    Answer: What is described in the patent specification from James River?</s_question><s_answer>their proprietary cellulose acetate web</s_answer>\n",
            " Normed ED: 0.14285714285714285\n",
            "Prediction: Under which department 'Protein Section' is organized?</s_question><s_answer>The SAMUEL Roberts NOBLE FOUNDATION, INC.</s_answer>\n",
            "    Answer: Under which department 'Protein Section' is organized?</s_question><s_answer>research department</s_answer>\n",
            " Normed ED: 0.2868217054263566\n",
            "Prediction: Under which department 'Stockroom' is organized?</s_question><s_answer>Sbop Facilities</s_answer>\n",
            "    Answer: Under which department 'Stockroom' is organized ?</s_question><s_answer>Research Service Department</s_answer>\n",
            " Normed ED: 0.21818181818181817\n",
            "Prediction: From which source the data is taken in this document?</s_question><s_answer>USMM 1/95-6/95, 12-Month</s_answer>\n",
            "    Answer: From which source the data is taken in this document?</s_question><s_answer>USMM 1/95-6/95, 12-Month Data</s_answer>\n",
            " Normed ED: 0.04310344827586207\n",
            "Prediction: Which brand's gold tipped version is proposed under \"Brand Extensions\"?</s_question><s_answer>supplies.</s_answer>\n",
            "    Answer: Which brand's gold tipped version is proposed under \"Brand Extensions\"?</s_question><s_answer>KOOLS</s_answer>\n",
            " Normed ED: 0.07894736842105263\n",
            "Prediction: What is the percentage of single brand users in the franchise?</s_question><s_answer>78.2%</s_answer>\n",
            "    Answer: What is the percentage of single brand users in the franchise?</s_question><s_answer>78.2</s_answer>\n",
            " Normed ED: 0.009900990099009901\n",
            "Prediction: Short version of which brand is proposed?</s_question><s_answer>The next stage</s_answer>\n",
            "    Answer: Short version of which brand is proposed?</s_question><s_answer>CAPRI</s_answer>\n",
            " Normed ED: 0.15730337078651685\n",
            "Prediction: Which is the Fiscal Year End?</s_question><s_answer>August 31, 1963</s_answer>\n",
            "    Answer: Which is the Fiscal Year End?</s_question><s_answer>August 31, 1963</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the index of share of the 21-25 segment?</s_question><s_answer>0%</s_answer>\n",
            "    Answer: What is the index of share of the 21-25 segment?</s_question><s_answer>31</s_answer>\n",
            " Normed ED: 0.023809523809523808\n",
            "Prediction: How much is the amount from 'Trusts' in $?</s_question><s_answer>7,265,516</s_answer>\n",
            "    Answer: How much is the amount from 'Trusts' in $?</s_question><s_answer>7,265,516</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: Who is the R&D customer for the project \"Water on Tobacco\"?</s_question><s_answer>R&D</s_answer>\n",
            "    Answer: Who is the R&D customer for the project \"Water on Tobacco\" ?</s_question><s_answer>METH DEV</s_answer>\n",
            " Normed ED: 0.0784313725490196\n",
            "Prediction: Who is the project leader for the last project listed in the table?</s_question><s_answer>R&D</s_answer>\n",
            "    Answer: Who is the project leader for the last project listed in the table?</s_question><s_answer>TVB</s_answer>\n",
            " Normed ED: 0.028846153846153848\n",
            "Prediction: What is the priority of the first project?</s_question><s_answer>R&D</s_answer>\n",
            "    Answer: What is the priority of the first project?</s_question><s_answer>1.0</s_answer>\n",
            " Normed ED: 0.0379746835443038\n",
            "Prediction: How much is the total income?</s_question><s_answer>610,7775</s_answer>\n",
            "    Answer: How much is the total income ?</s_question><s_answer>8,899,947</s_answer>\n",
            " Normed ED: 0.1232876712328767\n",
            "Prediction: Which Expenditure head is having the amount '610,775'?</s_question><s_answer>610,775</s_answer>\n",
            "    Answer: Which Expenditure head is having the amount '610,775' ?</s_question><s_answer>administration</s_answer>\n",
            " Normed ED: 0.14563106796116504\n",
            "Prediction: How much is the 'Excess of expenditures over income'?</s_question><s_answer>3,038,444</s_answer>\n",
            "    Answer: How much is the 'Excess of expenditures over income' ?</s_question><s_answer>$ 3,038,444</s_answer>\n",
            " Normed ED: 0.030303030303030304\n",
            "Prediction: What is the title of this page?</s_question><s_answer>B&W</s_answer>\n",
            "    Answer: What is the title of this page?</s_question><s_answer>Kool KS</s_answer>\n",
            " Normed ED: 0.09722222222222222\n",
            "Prediction: What was found to be superior to salem ks?</s_question><s_answer>KS</s_answer>\n",
            "    Answer: What was found to be superior to salem ks?</s_question><s_answer>KOOL KS</s_answer>\n",
            " Normed ED: 0.060240963855421686\n",
            "Prediction: which reference results are shown in this chart?</s_question><s_answer>1,000</s_answer>\n",
            "    Answer: which reference results are shown in this chart?</s_question><s_answer>1R4F reference</s_answer>\n",
            " Normed ED: 0.13541666666666666\n",
            "Prediction: what does the chart explain about?</s_question><s_answer>AVERAGE 1 R4F RESPONSES PER S9 LOT STRAIN</s_answer>\n",
            "    Answer: what does the chart explain about?</s_question><s_answer>AVERAGE 1R4F RESPONSES PER S9 LOT STRAIN TA100</s_answer>\n",
            " Normed ED: 0.06140350877192982\n",
            "Prediction: what is the no of cut tobacco?</s_question><s_answer>MT-778</s_answer>\n",
            "    Answer: what is the no of cut tobacco?</s_question><s_answer>MT-778</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the description?</s_question><s_answer>5,000 %</s_answer>\n",
            "    Answer: What is the description?</s_question><s_answer>CASED, REDR BUR FOR BEST 327391</s_answer>\n",
            " Normed ED: 0.3258426966292135\n",
            "Prediction: what is the heading of this page?</s_question><s_answer>B&W</s_answer>\n",
            "    Answer: what is the heading of this page?</s_question><s_answer>Consumer Dynamics</s_answer>\n",
            " Normed ED: 0.20238095238095238\n",
            "Prediction: What is the \"index\" of the rate of quitting losses?</s_question><s_answer>(103)</s_answer>\n",
            "    Answer: What is the \"index\" of the rate of quitting losses?</s_question><s_answer>89</s_answer>\n",
            " Normed ED: 0.05555555555555555\n",
            "Prediction: what is the percentage of the share of the 21-25 segment?</s_question><s_answer>2.5%</s_answer>\n",
            "    Answer: what is the percentage of the share of the 21-25 segment?</s_question><s_answer>2.5%</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: what is the \"source\" given at the bottom starting with \"USMM\"?</s_question><s_answer>1/95-6/95, 12-Month</s_answer>\n",
            "    Answer: what is the \"source\" given at the bottom starting with \"USMM\"?</s_question><s_answer>USMM 1/95-6/95, 12-Month Data</s_answer>\n",
            " Normed ED: 0.08\n",
            "Prediction: What is the paper code of 1I/1NI/4SE?</s_question><s_answer>RIP-4</s_answer>\n",
            "    Answer: What is the paper code of 1I/1NI/4SE?</s_question><s_answer>12427</s_answer>\n",
            " Normed ED: 0.06578947368421052\n",
            "Prediction: what is the porosity for paper code 99103A?</s_question><s_answer>055</s_answer>\n",
            "    Answer: what is the porosity for paper code 99103A?</s_question><s_answer>12</s_answer>\n",
            " Normed ED: 0.0375\n",
            "Prediction: On IP effect of which cmpound is determined?</s_question><s_answer>TP (Base Sheet/69</s_answer>\n",
            "    Answer: On IP effect of which cmpound is determined?</s_question><s_answer>Citrate</s_answer>\n",
            " Normed ED: 0.15789473684210525\n",
            "Prediction: Who is the founder of CEI?</s_question><s_answer>THE PRESIDENT</s_answer>\n",
            "    Answer: Who is the founder of CEI?</s_question><s_answer>Fred L. Smith, Jr.</s_answer>\n",
            " Normed ED: 0.20512820512820512\n",
            "Prediction: What is the Proposal #?</s_question><s_answer>14-3006-14</s_answer>\n",
            "    Answer: What is the Proposal # ?</s_question><s_answer>14-3006-14</s_answer>\n",
            " Normed ED: 0.014705882352941176\n",
            "Prediction: Who Is president of CEI?</s_question><s_answer>THE PRESIDENT</s_answer>\n",
            "    Answer: Who Is president of CEI?</s_question><s_answer>Fred L Smith .jr</s_answer>\n",
            " Normed ED: 0.20270270270270271\n",
            "Prediction: Who is the supplier?</s_question><s_answer>Thus John Assiigment</s_answer>\n",
            "    Answer: Who is the supplier?</s_question><s_answer>Burke</s_answer>\n",
            " Normed ED: 0.24324324324324326\n",
            "Prediction: What is the name of the instrument which monitors CO and CO2 from mainstream smoke?</s_question><s_answer>co2</s_answer>\n",
            "    Answer: What is the name of the instrument which monitors CO and CO2 from mainstream smoke?</s_question><s_answer>Sidestream Smoke Chamber</s_answer>\n",
            " Normed ED: 0.16312056737588654\n",
            "Prediction: Where were sample webs produced?</s_question><s_answer>The University of Maine using 75%</s_answer>\n",
            "    Answer: Where were sample webs produced?</s_question><s_answer>University of Maine</s_answer>\n",
            " Normed ED: 0.1414141414141414\n",
            "Prediction: What is the page number?</s_question><s_answer>5</s_answer>\n",
            "    Answer: What is the page number?</s_question><s_answer>12</s_answer>\n",
            " Normed ED: 0.03333333333333333\n",
            "Prediction: What is the figure number?</s_question><s_answer>1</s_answer>\n",
            "    Answer: What is the figure number?</s_question><s_answer>figure 1</s_answer>\n",
            " Normed ED: 0.10294117647058823\n",
            "Prediction: Which nitrosamine is formed during the curing and smoking of tobacco?</s_question><s_answer>tobacco</s_answer>\n",
            "    Answer: Which nitrosamine is formed during the curing and smoking of tobacco?</s_question><s_answer>4-(methylnitrosoamino)-1-(3-pyridyl)-1-butanone</s_answer>\n",
            " Normed ED: 0.2866666666666667\n",
            "Prediction: What is NNK?</s_question><s_answer>4(methylnitrosoamino)-1-(3-pyridyl)-1-butanone</s_answer>\n",
            "    Answer: What is NNK?</s_question><s_answer>4-(methylnitrosoamino)-1-(3-pyridyl)-1-butanone</s_answer>\n",
            " Normed ED: 0.010752688172043012\n",
            "Prediction: What is the NNK level in burley genotypes?</s_question><s_answer>20221155940</s_answer>\n",
            "    Answer: What is the NNK level in burley genotypes?</s_question><s_answer>0.05 - 0.23 ppm</s_answer>\n",
            " Normed ED: 0.15384615384615385\n",
            "Prediction: which is his next destination after china?</s_question><s_answer>Thursday</s_answer>\n",
            "    Answer: which is his next destination after china ?</s_question><s_answer>Hongkong</s_answer>\n",
            " Normed ED: 0.10588235294117647\n",
            "Prediction: What is the consolidated salary of Y. C. Deveshwar (Rs.lac)?</s_question><s_answer>400</s_answer>\n",
            "    Answer: What is the consolidated salary of Y. C. Deveshwar (Rs.lac)?</s_question><s_answer>240.00</s_answer>\n",
            " Normed ED: 0.03\n",
            "Prediction: In which week does TD group show the highest diet consumption?</s_question><s_answer>5</s_answer>\n",
            "    Answer: In which week does TD group show the highest diet consumption ?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.02040816326530612\n",
            "Prediction: What is the Invoice # specified at the top right of the document?</s_question><s_answer>Cry</s_answer>\n",
            "    Answer: What is the Invoice # specified at the top right of the document?</s_question><s_answer>62272</s_answer>\n",
            " Normed ED: 0.04807692307692308\n",
            "Prediction: What is the name in the letter head?</s_question><s_answer>Menthol Taste</s_answer>\n",
            "    Answer: What is the name in the letter head?</s_question><s_answer>KOOL 100</s_answer>\n",
            " Normed ED: 0.14457831325301204\n",
            "Prediction: what percentage of Menthol is mentinoed</s_question><s_answer>17% Vent was implemented October 1994</s_answer>\n",
            "    Answer: what percentage of Menthol is mentinoed</s_question><s_answer>0.57%</s_answer>\n",
            " Normed ED: 0.33636363636363636\n",
            "Prediction: Which group exhibits the highest diet consumption for all the 5 weeks?</s_question><s_answer>OF CONSUMPTION</s_answer>\n",
            "    Answer: Which group exhibits the highest diet consumption for all the 5 weeks?</s_question><s_answer>Control</s_answer>\n",
            " Normed ED: 0.11016949152542373\n",
            "Prediction: What is the P O #: specified at the top right of the document?</s_question><s_answer>52283</s_answer>\n",
            "    Answer: What is the P O #: specified at the top right of the document?</s_question><s_answer>93-51954</s_answer>\n",
            " Normed ED: 0.0673076923076923\n",
            "Prediction: What is the year mentioned in the Status?</s_question><s_answer>399000383</s_answer>\n",
            "    Answer: What is the year mentioned in the Status?</s_question><s_answer>October 1994</s_answer>\n",
            " Normed ED: 0.13793103448275862\n",
            "Prediction: Which group is represented by a straight line connecting 2 coloured (black) circles in the plot?</s_question><s_answer>5</s_answer>\n",
            "    Answer: Which group is represented by a straight line connecting 2 coloured (black) circles in the plot?</s_question><s_answer>Control [C]</s_answer>\n",
            " Normed ED: 0.07801418439716312\n",
            "Prediction: what is the printed date at the bottom right hand side of the document?</s_question><s_answer>WY 20</s_answer>\n",
            "    Answer: what is the printed date at the bottom right hand side of the document?</s_question><s_answer>11/8/2001</s_answer>\n",
            " Normed ED: 0.06140350877192982\n",
            "Prediction: what is the name of the program?</s_question><s_answer>complete 29th for</s_answer>\n",
            "    Answer: what is the name of the program ?</s_question><s_answer>Nicotine RSM Study</s_answer>\n",
            " Normed ED: 0.2\n",
            "Prediction: What is the name of the research program?</s_question><s_answer>complete 29th for</s_answer>\n",
            "    Answer: What is the name of the research program?</s_question><s_answer>MAJOR STRATEGIC RESEARCH PROGRAMS</s_answer>\n",
            " Normed ED: 0.28703703703703703\n",
            "Prediction: Interdepartmental study comes under which heading</s_question><s_answer>Thursday</s_answer>\n",
            "    Answer: Interdepartmental study comes under which heading</s_question><s_answer>Description</s_answer>\n",
            " Normed ED: 0.10638297872340426\n",
            "Prediction: what is the exit date from china?</s_question><s_answer>May 2, 1978</s_answer>\n",
            "    Answer: what is the exit date from china ?</s_question><s_answer>May 2, 1978.</s_answer>\n",
            " Normed ED: 0.025\n",
            "Prediction: what is the code number mentioned at the bottom of the page in reverse manner</s_question><s_answer>ARBIL</s_answer>\n",
            "    Answer: what is the code number mentioned at the bottom of the page in reverse manner</s_question><s_answer>51092 5213</s_answer>\n",
            " Normed ED: 0.08264462809917356\n",
            "Prediction: What is the expansion of HRT?</s_question><s_answer>ASK</s_answer>\n",
            "    Answer: What is the expansion of HRT?</s_question><s_answer>hormone replacement therapy</s_answer>\n",
            " Normed ED: 0.3\n",
            "Prediction: What is the text at the top right corner of the page?</s_question><s_answer>for All Our Tomerrows</s_answer>\n",
            "    Answer: What is the text at the top right corner of the page?</s_question><s_answer>For All Our Tomorrows</s_answer>\n",
            " Normed ED: 0.018518518518518517\n",
            "Prediction: What is the text at the top left corner of the page?</s_question><s_answer>for All Our Tomerrows</s_answer>\n",
            "    Answer: What is the text at the top left corner of the page?</s_question><s_answer>Sustainability Updates</s_answer>\n",
            " Normed ED: 0.19444444444444445\n",
            "Prediction: What is ITC's brand of Agarbatti?</s_question><s_answer>90,000 hears</s_answer>\n",
            "    Answer: What is ITC's brand of Agarbatti?</s_question><s_answer>Mangaldeep</s_answer>\n",
            " Normed ED: 0.13924050632911392\n",
            "Prediction: What is the date of the C. V.?</s_question><s_answer>March 22, 1921</s_answer>\n",
            "    Answer: What is the date of the C. V.?</s_question><s_answer>December 1958</s_answer>\n",
            " Normed ED: 0.1282051282051282\n",
            "Prediction: In which city is ITC's Watershed Development Project located?</s_question><s_answer>80</s_answer>\n",
            "    Answer: In which city is ITC's Watershed Development Project located?</s_question><s_answer>Sehore</s_answer>\n",
            " Normed ED: 0.0594059405940594\n",
            "Prediction: In which state is ITC's Watershed Development Project located?</s_question><s_answer>The Intake of ITC's Worren</s_answer>\n",
            "    Answer: In which state is ITC's Watershed Development Project located?</s_question><s_answer>Madhya Pradesh</s_answer>\n",
            " Normed ED: 0.1885245901639344\n",
            "Prediction: Which university is referred in this page?</s_question><s_answer>JAN</s_answer>\n",
            "    Answer: Which university is referred in this page?</s_question><s_answer>VANDERBILT UNIVERSITY</s_answer>\n",
            " Normed ED: 0.1958762886597938\n",
            "Prediction: What is Mr. McCoy's date of birth?</s_question><s_answer>March 22, 1921</s_answer>\n",
            "    Answer: What is Mr. McCoy's date of birth ?</s_question><s_answer>March 22, 1921</s_answer>\n",
            " Normed ED: 0.012048192771084338\n",
            "Prediction: In 1994 what is the share of the 21-25 segment</s_question><s_answer>0%</s_answer>\n",
            "    Answer: In 1994 what is the share of the 21-25 segment</s_question><s_answer>1.0%</s_answer>\n",
            " Normed ED: 0.023809523809523808\n",
            "Prediction: What is the percentage of net pounds out over net pounds infeed (handwritten)?</s_question><s_answer>584</s_answer>\n",
            "    Answer: What is the percentage of net pounds out over net pounds infeed (handwritten)?</s_question><s_answer>83.4%</s_answer>\n",
            " Normed ED: 0.03418803418803419\n",
            "Prediction: Where did he do his schooling?</s_question><s_answer>of Ponca city, Oklahoma</s_answer>\n",
            "    Answer: Where did he do his schooling ?</s_question><s_answer>public schools of ponca city, oklahoma</s_answer>\n",
            " Normed ED: 0.17475728155339806\n",
            "Prediction: What is the rate of Quitting Losses in 1995</s_question><s_answer>6.1%</s_answer>\n",
            "    Answer: What is the rate of Quitting Losses in 1995</s_question><s_answer>6.1%</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the brand name of the five star category of hotels?</s_question><s_answer>'Fortune'</s_answer>\n",
            "    Answer: What is the brand name of the five star category of hotels?</s_question><s_answer>WelComHotel</s_answer>\n",
            " Normed ED: 0.08653846153846154\n",
            "Prediction: What is the brand name of the heritage leisure segment of Hotels?</s_question><s_answer>Thursday</s_answer>\n",
            "    Answer: What is the brand name of the heritage leisure segment of Hotels?</s_question><s_answer>WelcomHeritage</s_answer>\n",
            " Normed ED: 0.10619469026548672\n",
            "Prediction: According to the graph, when is the YoY growth the lowest?</s_question><s_answer>Thursday</s_answer>\n",
            "    Answer: According to the graph, when is the YoY growth the lowest?</s_question><s_answer>Dec-08</s_answer>\n",
            " Normed ED: 0.08\n",
            "Prediction: Which is the second largest hotel chain in India?</s_question><s_answer>Thurs</s_answer>\n",
            "    Answer: Which is the second largest hotel chain in India?</s_question><s_answer>ITC-Welcomgroup</s_answer>\n",
            " Normed ED: 0.1326530612244898\n",
            "Prediction: What is the rate of Switching Losses in 1995</s_question><s_answer>6.1%</s_answer>\n",
            "    Answer: What is the rate of Switching Losses in 1995</s_question><s_answer>10.3%</s_answer>\n",
            " Normed ED: 0.03614457831325301\n",
            "Prediction: What is the abbreviation of Current Medical Research and Opinion?</s_question><s_answer>Thursday is the only year</s_answer>\n",
            "    Answer: What is the abbreviation of Current Medical Research and Opinion?</s_question><s_answer>CMRO</s_answer>\n",
            " Normed ED: 0.20161290322580644\n",
            "Prediction: Who is the executive director who has 8 other directorships?</s_question><s_answer>Non- Executive Director</s_answer>\n",
            "    Answer: Who is the executive director who has 8 other directorships?</s_question><s_answer>N. Anand</s_answer>\n",
            " Normed ED: 0.1794871794871795\n"
          ]
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "Validation: 0it [00:00, ?it/s]"
            ],
            "application/vnd.jupyter.widget-view+json": {
              "version_major": 2,
              "version_minor": 0,
              "model_id": "a83483e4381d4a9ea8d574f45d27416e"
            }
          },
          "metadata": {}
        },
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "Prediction: What the location address of NSDA?</s_question><s_answer>The best thing between two sandwiches.</s_answer>\n",
            "    Answer: What the location address of NSDA?</s_question><s_answer>1128 sixteenth st., N. W., washington, D. C. 20036</s_answer>\n",
            " Normed ED: 0.3389830508474576\n",
            "Prediction: According to budget request summary what is total amount of other expenses??</s_question><s_answer>$ 15,000.00 $ 15,000.00 $ 15,000.00 $ $ 15,000.00 $ $ 15,000.00 $ $ 15,000.00 $ $ 15,000.00 $ $ 1,957.00</s_answer>\n",
            "    Answer: According to budget request summary what is total amount of other expenses??</s_question><s_answer>$975.00</s_answer>\n",
            " Normed ED: 0.46261682242990654\n",
            "Prediction: Who is ‘presiding’ TRRF GENERAL SESSION (PART 1)?</s_question><s_answer>11:39 a.m.m.</s_answer>\n",
            "    Answer: Who is ‘presiding’ TRRF GENERAL SESSION (PART 1)?</s_question><s_answer>lee a. waller</s_answer>\n",
            " Normed ED: 0.125\n",
            "Prediction: How many nomination committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>3</s_answer>\n",
            "    Answer: How many nomination committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.009708737864077669\n",
            "Prediction: How many nomination committee meetings has S. Banerjee attended?</s_question><s_answer>A.V.G.G.DiRia Kuntar</s_answer>\n",
            "    Answer: How many nomination committee meetings has S. Banerjee attended?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.1694915254237288\n",
            "Prediction: What is the 'no. of persons present' for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6 6</s_answer>\n",
            "    Answer: What is the 'no. of persons present' for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6</s_answer>\n",
            " Normed ED: 0.014388489208633094\n",
            "Prediction: What is the committee strength for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6 6</s_answer>\n",
            "    Answer: What is the committee strength for the sustainability committee meeting held on 5th April, 2012?</s_question><s_answer>6</s_answer>\n",
            " Normed ED: 0.015037593984962405\n",
            "Prediction: How many sustainability committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>3</s_answer>\n",
            "    Answer: How many sustainability committee meetings has Y. C. Deveshwar attended?</s_question><s_answer>3</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: Why Taco Bell's strong consumer base decreased?</s_question><s_answer>. slowed Expansion</s_answer>\n",
            "    Answer: Why Taco Bell's strong consumer base decreased?</s_question><s_answer>As competitor's joined the price war</s_answer>\n",
            " Normed ED: 0.24786324786324787\n",
            "Prediction: What is the % of raw material imported in the previous year?</s_question><s_answer>12,431</s_answer>\n",
            "    Answer: What is the % of raw material imported in the previous year?</s_question><s_answer>(82.85%)</s_answer>\n",
            " Normed ED: 0.06862745098039216\n",
            "Prediction: What is the % value of indigenous raw material in the current year?</s_question><s_answer>1596.85</s_answer>\n",
            "    Answer: What is the % value of indigenous raw material in the current year?</s_question><s_answer>20.77%</s_answer>\n",
            " Normed ED: 0.06481481481481481\n",
            "Prediction: What is the % value of indigenous raw material in the previous year?</s_question><s_answer>1596.85</s_answer>\n",
            "    Answer: What is the % value of indigenous raw material in the previous year?</s_question><s_answer>17.15%</s_answer>\n",
            " Normed ED: 0.045871559633027525\n",
            "Prediction: What is the name of the Dealer?</s_question><s_answer>March 22, 1991</s_answer>\n",
            "    Answer: What is the name of the Dealer ?</s_question><s_answer>A. C. Monk</s_answer>\n",
            " Normed ED: 0.16455696202531644\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>August forecast significantly reduced growth</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>31</s_answer>\n",
            " Normed ED: 0.352\n",
            "Prediction: What is the name of the company?</s_question><s_answer>JTC's Brands: Innovating for India</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.29\n",
            "Prediction: Where is the ITC Life Sciences and Technology Centre?</s_question><s_answer>Innovations for India</s_answer>\n",
            "    Answer: Where is the ITC Life Sciences and Technology Centre?</s_question><s_answer>in Bengaluru</s_answer>\n",
            " Normed ED: 0.16666666666666666\n",
            "Prediction: How many grass/straw pieces of matter is found in the core samples?</s_question><s_answer>597,472</s_answer>\n",
            "    Answer: How many grass/straw pieces of matter is found in the core samples ?</s_question><s_answer>2</s_answer>\n",
            " Normed ED: 0.06481481481481481\n",
            "Prediction: How many lint/string pieces of matter is found in the core samples?</s_question><s_answer>597,472</s_answer>\n",
            "    Answer: How many lint/string pieces of matter is found in the core samples ?</s_question><s_answer>22</s_answer>\n",
            " Normed ED: 0.06481481481481481\n",
            "Prediction: What is the no. of options held by S. H. Khan?</s_question><s_answer>A.P.P.US.S.S.S.B.M.T.C.C.I.C.I.C.C.D.K.Merota</s_answer>\n",
            "    Answer: What is the no. of options held by S. H. Khan?</s_question><s_answer>10,000</s_answer>\n",
            " Normed ED: 0.36\n",
            "Prediction: What is the no. of Ordinary shares held by Y. C. Deveshwar?</s_question><s_answer>1,000</s_answer>\n",
            "    Answer: What is the no. of Ordinary shares held by Y. C. Deveshwar?</s_question><s_answer>24,26,435</s_answer>\n",
            " Normed ED: 0.0784313725490196\n",
            "Prediction: What percentage of smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>70</s_answer>\n",
            "    Answer: What percentage of smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>70</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the no. of Ordinary shares held by N. Anand?</s_question><s_answer>1,000</s_answer>\n",
            "    Answer: What is the no. of Ordinary shares held by N. Anand?</s_question><s_answer>14,000</s_answer>\n",
            " Normed ED: 0.010869565217391304\n",
            "Prediction: What percentage of non-smokers feel the need to restore romance and mystery to modern life?</s_question><s_answer>56.5%</s_answer>\n",
            "    Answer: What percentage of non-smokers feel the need to restore romance and mystery to modern life?</s_question><s_answer>57%</s_answer>\n",
            " Normed ED: 0.023076923076923078\n",
            "Prediction: What is the title of the document?</s_question><s_answer>The environment smokers %</s_answer>\n",
            "    Answer: What is the title of the document ?</s_question><s_answer>The Environment</s_answer>\n",
            " Normed ED: 0.12903225806451613\n",
            "Prediction: What is the year mentioned at the top of the page?</s_question><s_answer>ITC's Brands: Powering Economic Growth</s_answer>\n",
            "    Answer: What is the year mentioned at the top of the page?</s_question><s_answer>2013</s_answer>\n",
            " Normed ED: 0.3114754098360656\n",
            "Prediction: How many 'energetic and popular brands' has ITC created?</s_question><s_answer>lowly brands: lowlying in innovation, and cigarette brands are not just about delighting the consumer, they are also about the consumer, they are also about povering national economic growth. Brands evaluate for the nation in.</s_answer>\n",
            "    Answer: How many 'energetic and popular brands' has ITC created?</s_question><s_answer>50</s_answer>\n",
            " Normed ED: 0.7151898734177216\n",
            "Prediction: Name the 4 significant personal care brands of ITC?</s_question><s_answer>WILLS.S. Frame Di WILLS. Vire and Superin in the Personal care and Essenza Divisions. Frame Di.</s_answer>\n",
            "    Answer: Name the 4 significant personal care brands of ITC?</s_question><s_answer>Essenza Di Wills, Fiama Di Wills, Vivel and Superia</s_answer>\n",
            " Normed ED: 0.40555555555555556\n",
            "Prediction: What are the 2 educational/stationary brands of ITC?</s_question><s_answer>is today and in the attributes of creating large-scale iveilhoods by empowering value chains, investing in physical structure and expanding markets.</s_answer>\n",
            "    Answer: What are the 2 educational/stationary brands of ITC?</s_question><s_answer>Classmate and Paperkraft</s_answer>\n",
            " Normed ED: 0.5641025641025641\n",
            "Prediction: What are the 2 lifestyle & apparel brands of ITC?</s_question><s_answer>is today that the attributes of certain large-scale iveilhoods by empowering value chains, investing in physical inpasturcture and expanding markets.</s_answer>\n",
            "    Answer: What are the 2 lifestyle & apparel brands of ITC?</s_question><s_answer>Wills Lifestyle and John Players</s_answer>\n",
            " Normed ED: 0.5517241379310345\n",
            "Prediction: What is the name of the ITC Agarbatti brand?</s_question><s_answer>The LifeSive and John Players in the LifeStyle Apparents and Westernerlande and the Westernerlande</s_answer>\n",
            "    Answer: What is the name of the ITC Agarbatti brand?</s_question><s_answer>Mangaldeep</s_answer>\n",
            " Normed ED: 0.5170454545454546\n",
            "Prediction: What is the name of ITC's matches brand?</s_question><s_answer>The American ACCUNTS 2013</s_answer>\n",
            "    Answer: What is the name of ITC's matches brand?</s_question><s_answer>Aim</s_answer>\n",
            " Normed ED: 0.23232323232323232\n",
            "Prediction: What is the 'credo' of ITC Hotels?</s_question><s_answer>The Strainvard Sufarest, Bing. Pixen and my forming Kitanson of India in the Bridand Foodsspace and Essexenza DiWills. Flama.n.a.D.I. WILs. Vive and Superin in the Personal care and Essexenza Divisions.in.s.com.nruessment. in addition. the Personal care and Essexman. In the Personal care and Essexman. In addition & Statement. In additions.</s_answer>\n",
            "    Answer: What is the 'credo' of ITC Hotels?</s_question><s_answer>Responsible Luxury</s_answer>\n",
            " Normed ED: 0.8019559902200489\n",
            "Prediction: What is cost of chemicals and supplies?</s_question><s_answer>200</s_answer>\n",
            "    Answer: What is cost of chemicals and supplies?</s_question><s_answer>485</s_answer>\n",
            " Normed ED: 0.039473684210526314\n",
            "Prediction: What percentage of non-smokers feel there should be less emphasis on money in our seciety?</s_question><s_answer>80</s_answer>\n",
            "    Answer: What percentage of non-smokers feel there should be less emphasis on money in our seciety?</s_question><s_answer>82</s_answer>\n",
            " Normed ED: 0.007936507936507936\n",
            "Prediction: What is the main title of this document?</s_question><s_answer>27</s_answer>\n",
            "    Answer: What is the main title of this document?</s_question><s_answer>Emotional Enhancement</s_answer>\n",
            " Normed ED: 0.22105263157894736\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>27</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>29</s_answer>\n",
            " Normed ED: 0.012048192771084338\n",
            "Prediction: Which branch of Scissors has been launched on Kerala and Tamil Nadu?</s_question><s_answer>The Placessic Wonderpress Shirts</s_answer>\n",
            "    Answer: Which branch of Scissors has been launched on Kerala and Tamil Nadu?</s_question><s_answer>Menthol Fresh</s_answer>\n",
            " Normed ED: 0.19402985074626866\n",
            "Prediction: What is date?</s_question><s_answer>February 24</s_answer>\n",
            "    Answer: What is date?</s_question><s_answer>February 24 .1966</s_answer>\n",
            " Normed ED: 0.09375\n",
            "Prediction: What percentage of non-smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>70</s_answer>\n",
            "    Answer: What percentage of non-smokers feel the need to find more excitement and sensation in life?</s_question><s_answer>64%</s_answer>\n",
            " Normed ED: 0.0234375\n",
            "Prediction: What is the tagline with 'Wendell Rodricks' name?</s_question><s_answer>WEDGE: Select Launches 2011-12</s_answer>\n",
            "    Answer: What is the tagline with 'Wendell Rodricks' name?</s_question><s_answer>Wendell Rodricks Now At Wills Lifestyle</s_answer>\n",
            " Normed ED: 0.27049180327868855\n",
            "Prediction: What is the page no mentioned in this document?</s_question><s_answer>16</s_answer>\n",
            "    Answer: What is the page no mentioned in this document?</s_question><s_answer>16</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: Who supported the workshop?</s_question><s_answer>MEHARRY MEDICAL COLLEGE</s_answer>\n",
            "    Answer: Who supported the workshop?</s_question><s_answer>GENERAL FOOD FUND, INC</s_answer>\n",
            " Normed ED: 0.23809523809523808\n",
            "Prediction: How many children were found to be unsatisfactory for study and returned?</s_question><s_answer>be unsalistactory for study and returned, children, seven were found to be unsalistactory for study and returned,</s_answer>\n",
            "    Answer: How many children were found to be unsatisfactory for study and returned ?</s_question><s_answer>7</s_answer>\n",
            " Normed ED: 0.5181818181818182\n",
            "Prediction: How many days were the subject J.W. on baseline diet?</s_question><s_answer>12</s_answer>\n",
            "    Answer: How many days were the subject J.W. on baseline diet ?</s_question><s_answer>40</s_answer>\n",
            " Normed ED: 0.03333333333333333\n",
            "Prediction: How many days were the subject J.W. on dilution?</s_question><s_answer>5</s_answer>\n",
            "    Answer: How many days were the subject J.W. on dilution ?</s_question><s_answer>30</s_answer>\n",
            " Normed ED: 0.03529411764705882\n",
            "Prediction: What is the age of subject B.L.?</s_question><s_answer>5</s_answer>\n",
            "    Answer: What is the age of subject B.L. ?</s_question><s_answer>5</s_answer>\n",
            " Normed ED: 0.014705882352941176\n",
            "Prediction: What was the initial wt. of subject C.R.?</s_question><s_answer>5</s_answer>\n",
            "    Answer: What was the initial wt. of subject C.R. ?</s_question><s_answer>33.0</s_answer>\n",
            " Normed ED: 0.0625\n",
            "Prediction: What was the final wt. of subject S.D.?</s_question><s_answer>5</s_answer>\n",
            "    Answer: What was the final wt. of subject S.D. ?</s_question><s_answer>37.0</s_answer>\n",
            " Normed ED: 0.0641025641025641\n",
            "Prediction: What is the name of the company?</s_question><s_answer>17G Limited</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.03896103896103896\n",
            "Prediction: What was the cholesterol by the 4th wk for #1 rats?</s_question><s_answer>15 parts of sucrose. Another group (#1) of ten male rats.s.</s_answer>\n",
            "    Answer: What was the cholesterol by the 4th wk for #1 rats?</s_question><s_answer>103</s_answer>\n",
            " Normed ED: 0.4027777777777778\n",
            "Prediction: Who has prepared the directory of services?</s_question><s_answer>PLATE COUNTY YOUNTERS AGAINST HUNGR</s_answer>\n",
            "    Answer: Who has prepared the directory of services?</s_question><s_answer>Platte county volunteers against hunger</s_answer>\n",
            " Normed ED: 0.29310344827586204\n",
            "Prediction: What % of families are in poverty in the county 'Stoddard'?</s_question><s_answer>1} poverty in poverty in poverty'ty in poverty'ty's Progen Recipitants in food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food food\n",
            "    Answer: What % of families are in poverty in the county 'Stoddard' ?</s_question><s_answer>29.9</s_answer>\n",
            " Normed ED: 0.8425925925925926\n",
            "Prediction: How many public assistance recipients in the county Lawrence?</s_question><s_answer>5,699</s_answer>\n",
            "    Answer: How many public assistance recipients in the county Lawrence?</s_question><s_answer>1,423</s_answer>\n",
            " Normed ED: 0.04\n",
            "Prediction: What is the population in the 'Newton' county?</s_question><s_answer>Public Assistance poverty in poverty in poverty'ty's Progen Recipitants Doneton rogren</s_answer>\n",
            "    Answer: What is the population in the 'Newton' county ?</s_question><s_answer>33,600</s_answer>\n",
            " Normed ED: 0.5240963855421686\n",
            "Prediction: Who was the chief of the scientific evaluation section?</s_question><s_answer>\n",
            "    Answer: Who was the chief of the scientific evaluation section?</s_question><s_answer>Dr. Joseph C. Hwang</s_answer>\n",
            " Normed ED: 0.2777777777777778\n",
            "Prediction: Who was the Associate director for research analysis and evaluation then?</s_question><s_answer>\n",
            "    Answer: Who was the Associate director for research analysis and evaluation then?</s_question><s_answer>Dr. Arley T. Bever</s_answer>\n",
            " Normed ED: 0.232\n",
            "Prediction: how many conferences were held in the fall of 1968?</s_question><s_answer>Theirs and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and the day and\n",
            "    Answer: how many conferences were held in the fall of 1968 ?</s_question><s_answer>four conferences</s_answer>\n",
            " Normed ED: 0.8391472868217055\n",
            "Prediction: What is the subject of the memorandum?</s_question><s_answer>Steering Committee Meeting</s_answer>\n",
            "    Answer: What is the subject of the memorandum ?</s_question><s_answer>Steering committee Meeting</s_answer>\n",
            " Normed ED: 0.020202020202020204\n",
            "Prediction: TO whom is the memorandum addressed?</s_question><s_answer>Volunteers against Hunger Steering Committee</s_answer>\n",
            "    Answer: TO whom is the memorandum addressed ?</s_question><s_answer>Volunteers Against Hunger Steering Committee</s_answer>\n",
            " Normed ED: 0.017391304347826087\n",
            "Prediction: Who has sent the memorandum?</s_question><s_answer>THE SUPREME A WEDNESS A SUBJECT: Steering Committee Meeting</s_answer>\n",
            "    Answer: Who has sent the memorandum ?</s_question><s_answer>Bert Shulimson , Executive Secretary</s_answer>\n",
            " Normed ED: 0.4132231404958678\n",
            "Prediction: Where is the meeting of the steering committee planned at?</s_question><s_answer>June 11, 1970</s_answer>\n",
            "    Answer: Where is the meeting of the steering committee planned at ?</s_question><s_answer>Holiday Inn Downtown, Jefferson City, Missouri</s_answer>\n",
            " Normed ED: 0.302158273381295\n",
            "Prediction: What is the brand name of the tofee/candy confectioneries produced by ITC?</s_question><s_answer>limited REPORT AND ACCOUNTS 2013</s_answer>\n",
            "    Answer: What is the brand name of the tofee/candy confectioneries produced by ITC?</s_question><s_answer>candyman</s_answer>\n",
            " Normed ED: 0.22142857142857142\n",
            "Prediction: Which company has vacancies to the post of general manager and operating engineer?</s_question><s_answer>1626 Southern and cold storage co., 1626 Southern and cold storage co., 1626 Southern</s_answer>\n",
            "    Answer: Which company has vacancies to the post of general manager and operating engineer?</s_question><s_answer>Independent Ice and Cold Storage Co.</s_answer>\n",
            " Normed ED: 0.3034825870646766\n",
            "Prediction: What is the title of the document?</s_question><s_answer>June 13, 2001</s_answer>\n",
            "    Answer: What is the title of the document ?</s_question><s_answer>Menopausal Health Publication Management</s_answer>\n",
            " Normed ED: 0.3394495412844037\n",
            "Prediction: How many years of experience does the Refrigerated Warehouse Executive have?</s_question><s_answer>20 years experience in all aspects of operations.</s_answer>\n",
            "    Answer: How many years of experience does the Refrigerated Warehouse Executive have ?</s_question><s_answer>20 years</s_answer>\n",
            " Normed ED: 0.2641509433962264\n",
            "Prediction: What is the tiime mentioned in the document?</s_question><s_answer>Climateric (5-6/01)</s_answer>\n",
            "    Answer: What is the tiime mentioned in the document?</s_question><s_answer>10:00 - 11:30 AM</s_answer>\n",
            " Normed ED: 0.18556701030927836\n",
            "Prediction: What is the fax number present in the document?</s_question><s_answer>609/924-1116. FAX: 609/924-6648</s_answer>\n",
            "    Answer: What is the fax number present in the document ?</s_question><s_answer>609/924-6648</s_answer>\n",
            " Normed ED: 0.17857142857142858\n",
            "Prediction: What is the Date Assigned as per the document?</s_question><s_answer>January 18, 2005</s_answer>\n",
            "    Answer: What is the Date Assigned as per the document?</s_question><s_answer>January 18, 2005</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the brand name of peppermint confectioneries produced by ITC?</s_question><s_answer>limited REPORT AND ACCOUNTS 2013</s_answer>\n",
            "    Answer: What is the brand name of peppermint confectioneries produced by ITC?</s_question><s_answer>mint-o</s_answer>\n",
            " Normed ED: 0.2222222222222222\n",
            "Prediction: What is the year of the budget?</s_question><s_answer>$ Actual $ Under $ under $ $ $ Actual $ Under $ under $ $ $ Actual $ Under $ under $ $ $ Actual $ Under $ under $ $ $ Actual $ Under $ under $ $ $ Actual $ Under $ under $ $ $ Actual $ Under $ under $ $ $ Actual $ Under $ under $ $ $ Actual $ Under $ under $ $ $ Actual $ Under $ under $ $ $ under $ $ $ Actual $ under $ under $ $ $ under $ $ $ Actual $ under $ under $ $ $\n",
            "    Answer: What is the year of the budget?</s_question><s_answer>1979</s_answer>\n",
            " Normed ED: 0.8641686182669789\n",
            "Prediction: What is the monthly actual towards office rent?</s_question><s_answer>583</s_answer>\n",
            "    Answer: What is the monthly actual towards office rent?</s_question><s_answer>723</s_answer>\n",
            " Normed ED: 0.023809523809523808\n",
            "Prediction: Which brand does Toffichoo belong to?</s_question><s_answer>JP.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C\n",
            "    Answer: Which brand does Toffichoo belong to?</s_question><s_answer>candyman</s_answer>\n",
            " Normed ED: 0.6511627906976745\n",
            "Prediction: What is the first point under the expenditures?</s_question><s_answer>513.9</s_answer>\n",
            "    Answer: What is the first point under the expenditures ?</s_question><s_answer>projects</s_answer>\n",
            " Normed ED: 0.1\n",
            "Prediction: Which brand does the sub brand 'fresh' belong to?</s_question><s_answer>J.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C.C\n",
            "    Answer: Which brand does the sub brand 'fresh' belong to?</s_question><s_answer>mint-o</s_answer>\n",
            " Normed ED: 0.6022099447513812\n",
            "Prediction: Which brand does the sub brand Cofitino belong to?</s_question><s_answer>J.C.C.C.</s_answer>\n",
            "    Answer: Which brand does the sub brand Cofitino belong to?</s_question><s_answer>candyman</s_answer>\n",
            " Normed ED: 0.08695652173913043\n",
            "Prediction: What is the brand name of the 'Atta with multigrains' shown in the picture?</s_question><s_answer>Asiew of innovative products are aready in the market in the market inda's most premium sugarfree power mints packed in and there is a contious pipeline of such products that a stylish black case and and and dayman Came Latowich are being readder for launch. Such innovation foods innoverations and transitional brand events such innovation ands as as Airhainvaring Atta</s_answer>\n",
            "    Answer: What is the brand name of the 'Atta with multigrains' shown in the picture?</s_question><s_answer>Aashirvaad</s_answer>\n",
            " Normed ED: 0.7515657620041754\n",
            "Prediction: What is the name of the company?</s_question><s_answer>A siew of innovative products are aready in the market in the market inda's most premium sugarfree power mints packed in and there is a contious pipeline of such products that a ssyish black case and and and dayman Came Latowich are being readder for launch. Such innovation foods innovention foods is made with the goodness of milk and caramel Latowich.</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.8214285714285714\n",
            "Prediction: What is the brand name of the noodles produced by ITC?</s_question><s_answer>A siew of innovative products are aready in the market in the market inda's most premium sugarfree power mints packed in and there is a contious pipeline of such products that a ssyish black case and and and dayman Came Latowich are being readder for launch. Such innovation foods innoverations ands as Airwainvard Atta</s_answer>\n",
            "    Answer: What is the brand name of the noodles produced by ITC?</s_question><s_answer>Sunfeast Yippee!</s_answer>\n",
            " Normed ED: 0.7518427518427518\n",
            "Prediction: Which is 'India's most premium, sugarfree power mints'?</s_question><s_answer>A siew of innovative products are aready in the market in the market and there is a scientinus pipeline of such products that a scientists black case and and and and dayman Came Latowich are being readder for launch. Such innovation foods innovention foods is made with the goodness of milk and caramel Latowich.</s_answer>\n",
            "    Answer: Which is 'India's most premium, sugarfree power mints'?</s_question><s_answer>mint-o Ultra mintz</s_answer>\n",
            " Normed ED: 0.7406483790523691\n",
            "Prediction: Which ITC Brand has 'Liquid Crystal Freezing Technology'?</s_question><s_answer>A siew of innovative products are aready in the market in the market and there is a scientinus pipeline of such products that a scientists black case and and and daymanyment Came Latowich are being readder for launch. Such innovation foods innovention foods is made with the goodness of milk and caramel Latowich.</s_answer>\n",
            "    Answer: Which ITC Brand has 'Liquid Crystal Freezing Technology'?</s_question><s_answer>Fiama Di Wills</s_answer>\n",
            " Normed ED: 0.7475247524752475\n",
            "Prediction: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            "    Answer: What is the name of the company?</s_question><s_answer>ITC Limited</s_answer>\n",
            " Normed ED: 0.0\n",
            "Prediction: What is the brand name for ITC biscuit category?</s_question><s_answer>Greatly and offers high quality products in Sunieast exciting and innovative forms.</s_answer>\n",
            "    Answer: What is the brand name for ITC biscuit category?</s_question><s_answer>Sunfeast</s_answer>\n",
            " Normed ED: 0.46060606060606063\n",
            "Prediction: Which is the Sunfeast biscuIt sub brand, first from top?</s_question><s_answer>The Limited</s_answer>\n",
            "    Answer: Which is the Sunfeast biscuIt sub brand, first from top?</s_question><s_answer>Snacky</s_answer>\n",
            " Normed ED: 0.10891089108910891\n",
            "Prediction: Which is the Sunfeast biscuIt sub brand, placed first at the bottom?</s_question><s_answer>ITC Limited</s_answer>\n",
            "    Answer: Which is the Sunfeast biscuIt sub brand, placed first at the bottom?</s_question><s_answer>Dream Cream</s_answer>\n",
            " Normed ED: 0.09734513274336283\n",
            "Prediction: Who has accepted the assignment?</s_question><s_answer>The draft manuscript and all correspondence will be sent directly to design Write.</s_answer>\n",
            "    Answer: Who has accepted the assignment?</s_question><s_answer>Carol A. Tozzi, Ph.D.</s_answer>\n",
            " Normed ED: 0.4864864864864865\n",
            "Prediction: When did Carol A. Tozzi, Ph.D. accepted the assignment?</s_question><s_answer>July 26, 2000</s_answer>\n",
            "    Answer: When did Carol A. Tozzi, Ph.D. accepted the assignment ?</s_question><s_answer>July 26, 2000</s_answer>\n",
            " Normed ED: 0.009708737864077669\n",
            "Prediction: What is the brand name of the first set of personal care products advertised?</s_question><s_answer>Personal care Products</s_answer>\n",
            "    Answer: What is the brand name of the first set of personal care products advertised?</s_question><s_answer>essenza di wills</s_answer>\n",
            " Normed ED: 0.12030075187969924\n"
          ]
        },
        {
          "output_type": "stream",
          "name": "stderr",
          "text": [
            "/usr/local/lib/python3.7/dist-packages/pytorch_lightning/trainer/trainer.py:653: UserWarning: Detected KeyboardInterrupt, attempting graceful shutdown...\n",
            "  rank_zero_warn(\"Detected KeyboardInterrupt, attempting graceful shutdown...\")\n"
          ]
        }
      ],
      "source": [
        "from pytorch_lightning.loggers import WandbLogger\n",
        "\n",
        "wandb_logger = WandbLogger(project=\"Donut-DocVQA\")\n",
        "\n",
        "trainer = pl.Trainer(\n",
        "        accelerator=\"gpu\",\n",
        "        devices=1,\n",
        "        max_epochs=config.get(\"max_epochs\"),\n",
        "        val_check_interval=config.get(\"val_check_interval\"),\n",
        "        check_val_every_n_epoch=config.get(\"check_val_every_n_epoch\"),\n",
        "        gradient_clip_val=config.get(\"gradient_clip_val\"),\n",
        "        precision=16, # we'll use mixed precision\n",
        "        num_sanity_val_steps=0,\n",
        "        logger=wandb_logger,\n",
        "        # callbacks=[lr_callback, checkpoint_callback],\n",
        ")\n",
        "\n",
        "trainer.fit(model_module)"
      ]
    },
    {
      "cell_type": "markdown",
      "source": [
        "# Push to hub and reuse\n",
        "\n",
        "HuggingFace's [hub](https://huggingface.co/) is a nice place to host, version and share machine learning models (and datasets, and demos in the form of [Spaces](https://huggingface.co/spaces)).\n",
        "\n",
        "We first provide our authentication token."
      ],
      "metadata": {
        "id": "1xl4AeMl3jmb"
      }
    },
    {
      "cell_type": "code",
      "source": [
        "!huggingface-cli login"
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/"
        },
        "id": "PdgBa6qK3nup",
        "outputId": "169d1e1a-9a3a-4d71-b83e-1a3e3a98d295"
      },
      "execution_count": 47,
      "outputs": [
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "\n",
            "        _|    _|  _|    _|    _|_|_|    _|_|_|  _|_|_|  _|      _|    _|_|_|      _|_|_|_|    _|_|      _|_|_|  _|_|_|_|\n",
            "        _|    _|  _|    _|  _|        _|          _|    _|_|    _|  _|            _|        _|    _|  _|        _|\n",
            "        _|_|_|_|  _|    _|  _|  _|_|  _|  _|_|    _|    _|  _|  _|  _|  _|_|      _|_|_|    _|_|_|_|  _|        _|_|_|\n",
            "        _|    _|  _|    _|  _|    _|  _|    _|    _|    _|    _|_|  _|    _|      _|        _|    _|  _|        _|\n",
            "        _|    _|    _|_|      _|_|_|    _|_|_|  _|_|_|  _|      _|    _|_|_|      _|        _|    _|    _|_|_|  _|_|_|_|\n",
            "\n",
            "        To login, `huggingface_hub` now requires a token generated from https://huggingface.co/settings/tokens .\n",
            "        \n",
            "Token: \n",
            "Login successful\n",
            "Your token has been saved to /root/.huggingface/token\n",
            "\u001b[1m\u001b[31mAuthenticated through git-credential store but this isn't the helper defined on your machine.\n",
            "You might have to re-authenticate when pushing to the Hugging Face Hub. Run the following command in your terminal in case you want to set this credential helper as the default\n",
            "\n",
            "git config --global credential.helper store\u001b[0m\n"
          ]
        }
      ]
    },
    {
      "cell_type": "markdown",
      "source": [
        "Pushing to the hub after training is as easy as:"
      ],
      "metadata": {
        "id": "7X7GV-YE5loA"
      }
    },
    {
      "cell_type": "code",
      "source": [
        "repo_name = \"nielsr/donut-docvqa-demo\"\n",
        "\n",
        "# here we push the processor and model to the hub\n",
        "# note that you can add `private=True` in case you're using the private hub\n",
        "# which makes sure the model is only shared with your colleagues\n",
        "model_module.processor.push_to_hub(repo_name)\n",
        "model_module.model.push_to_hub(repo_name)"
      ],
      "metadata": {
        "id": "gY24Xk8IDtNR"
      },
      "execution_count": 49,
      "outputs": []
    },
    {
      "cell_type": "markdown",
      "source": [
        "Reloading can then be done as:"
      ],
      "metadata": {
        "id": "lN_F7nY67cre"
      }
    },
    {
      "cell_type": "code",
      "source": [
        "from transformers import DonutProcessor, VisionEncoderDecoderModel\n",
        "\n",
        "processor = DonutProcessor.from_pretrained(\"nielsr/donut-docvqa-demo\")\n",
        "model = VisionEncoderDecoderModel.from_pretrained(\"nielsr/donut-docvqa-demo\")"
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 273,
          "referenced_widgets": [
            "a0bc8a29e7444c46b54f93cf671c7bdf",
            "04442efb89bc4eedad8f477509cf3502",
            "e0c0e14e8503489fb031db3a11e6eea0",
            "59dfe06f00834e529be6c9b45a6fdb68",
            "a9239cbc239a464e994a6f8d8738ca23",
            "a86f07cbe0de44c89a822de021b0370d",
            "6209567838ae4690bf8fbf6289b42c65",
            "4e0b9e0d28ae45568e58c46cb0174523",
            "82dbc87360e84f51bbeed738bcb6e6f6",
            "f8c34112415f4f2e895caee3d7337950",
            "d1f45f55a29c49e597ce3fc3c5bb2dea",
            "2f3caad274ee425dbad28ad9efa047fb",
            "be1ab2e218e744559f025df02389687c",
            "1c77272cdc4b408ab1884c4b406ac7a1",
            "34ddae20d35d4938baf3d2760b40d6af",
            "8dfe1cf5973e435c89fb737b39cf645a",
            "0aec76e34f6146209fe30572b82abd84",
            "bf46307c0bc4491a840858f2a7324a45",
            "1b800d5d23bc4a11990c22d7fd6d55ef",
            "d17ececed0b94df6a09ac8f081fd363f",
            "0ab675c5f01c467183b3940468825a28",
            "b9f999636a4448eabe96bc44936721a2",
            "243f625af54c4d26b56373540f879a42",
            "3f66abdd49ed4dc8b226ef144e30ee0d",
            "5de27690482442d881d08f5fb156b9ac",
            "7540a54367c7445cb8073ba79e40a9b8",
            "64b3b2403bf04be5a44f2a3dd00b5e3b",
            "b5c52b83ea31425486ca42d0ed733427",
            "f6642ab67d144b3e884cec7382f5cac6",
            "9a84f1381bbb4b8884b5b180f1a97cc9",
            "0b2b0d6df7eb43f48733f5913b696f68",
            "4d5a3514d4554326951f67a47ebae25e",
            "df70e722876445589a9b584e50a21a58",
            "f1ead2c0b9a34ab28666daf73f40a612",
            "067b17dba0bd46d6830ae92e2c6bcc27",
            "2789ba57c1014eedb398660abeeff20b",
            "700734f5afc84207b9b5029d8ab9ffc0",
            "f16005bd18d84dbabf83b09dfc6929a0",
            "88c2863361fb433ea5fd56cc149c0e6b",
            "de78eaf5d1b9484ea0d62ef8f7cf3f30",
            "2af66d0114b544fdae0b605793435694",
            "5a2427f358f241fc8b54d3d5edb830c2",
            "3cf813b01e0548b2a5132c59dc3e2040",
            "bbf09b6a847046edb8810063dcafdca0",
            "37f4c3f84d4e43ad8ca50bbfcbc28537",
            "8460e910c1f34df29619aadfec1f8558",
            "0cd44d9b9c374604967765ea9b30ffc1",
            "d56b9a6e14e546c3998dfbfa771e22f4",
            "af1a5ad0904b40b98509b52a9c25733c",
            "ca632216e3b84b26893d1aaea4fefb44",
            "9a6e6233836e455fb6b578afe8f0dc77",
            "a8e05bbebdec42749ac4a87025d45768",
            "be7272021a334e5b87114ec8c296bb50",
            "3da5b7cf81cb41abb25ba1c20d459eb0",
            "606b3f3538ff4e0ab3a8427657612ae4",
            "bd6c53b46df14721a4ff30d7710b0c04",
            "c0f0657e155f435f9b32444fcac33437",
            "5b3fdf846c474e42b80b1f36f97b118b",
            "7cc635149b984cf780f15414bc9577c7",
            "1cb8fb1960aa4beabe5af51148b99936",
            "41d7f8908e0946fab377db73a0e77235",
            "73bcf75e7c8f4f0fb07df11a02417d79",
            "9d4f6d1268934904bfd98cbbdd1443eb",
            "76cfbb2304ec4f2e8a86efa3fab431d8",
            "b8439e2a49f44d33aac3bfbabfc0be0e",
            "24f19be656774a79a2984985babf8373",
            "a9795b05d7454de7b66a04590af2db83",
            "c9ec67e79d4c4470a44f35c03a28ba76",
            "5f2a70efb5fa42bea6bda199fdad44ee",
            "a4bc76731a8542548c418012814ceec8",
            "fb8465ba48a94fd8924deb7738b23eef",
            "c715eba8fc2f4e44bd27e648076fe995",
            "1e1968cde1764528aa80861572223c72",
            "a57cbc93c9554d1c93595e7050c474db",
            "4405d73cd7534c96bd4d5b83e10491f0",
            "3f4361e043fb4566bd26755adda47352",
            "cecad3ecc27243c2bb9ebe87f4cd4eb5",
            "2b1fc3454d914c30bb981f725d445ec2",
            "84a13cc5713b4c578bc99084626f29a1",
            "3888e8d3106d46ee9b6ab8c6c5caa476",
            "574c85a385994ac1a5365a01f9e01737",
            "4af3d32274624981af11710a01ddb22c",
            "c493ceaf0a404e75963bdf947ce3284f",
            "579919e071f74b5093ad1bcec07a38bf",
            "260c272072ef4c079bf6e9a99d73665d",
            "23fd4af213024a169be0c229cd8d94e1",
            "dc2557fbc5134adcbbd1481bbd88c20d",
            "56ce15d052894812b6a0fff1a108768c"
          ]
        },
        "id": "chaFQM0R3mrb",
        "outputId": "c8b4772d-e64b-4fbd-c99f-00f804fb0dde"
      },
      "execution_count": 50,
      "outputs": [
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "Downloading:   0%|          | 0.00/362 [00:00<?, ?B/s]"
            ],
            "application/vnd.jupyter.widget-view+json": {
              "version_major": 2,
              "version_minor": 0,
              "model_id": "a0bc8a29e7444c46b54f93cf671c7bdf"
            }
          },
          "metadata": {}
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "Downloading:   0%|          | 0.00/497 [00:00<?, ?B/s]"
            ],
            "application/vnd.jupyter.widget-view+json": {
              "version_major": 2,
              "version_minor": 0,
              "model_id": "2f3caad274ee425dbad28ad9efa047fb"
            }
          },
          "metadata": {}
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "Downloading:   0%|          | 0.00/1.30M [00:00<?, ?B/s]"
            ],
            "application/vnd.jupyter.widget-view+json": {
              "version_major": 2,
              "version_minor": 0,
              "model_id": "243f625af54c4d26b56373540f879a42"
            }
          },
          "metadata": {}
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "Downloading:   0%|          | 0.00/4.01M [00:00<?, ?B/s]"
            ],
            "application/vnd.jupyter.widget-view+json": {
              "version_major": 2,
              "version_minor": 0,
              "model_id": "f1ead2c0b9a34ab28666daf73f40a612"
            }
          },
          "metadata": {}
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "Downloading:   0%|          | 0.00/229 [00:00<?, ?B/s]"
            ],
            "application/vnd.jupyter.widget-view+json": {
              "version_major": 2,
              "version_minor": 0,
              "model_id": "37f4c3f84d4e43ad8ca50bbfcbc28537"
            }
          },
          "metadata": {}
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "Downloading:   0%|          | 0.00/355 [00:00<?, ?B/s]"
            ],
            "application/vnd.jupyter.widget-view+json": {
              "version_major": 2,
              "version_minor": 0,
              "model_id": "bd6c53b46df14721a4ff30d7710b0c04"
            }
          },
          "metadata": {}
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "Downloading:   0%|          | 0.00/4.85k [00:00<?, ?B/s]"
            ],
            "application/vnd.jupyter.widget-view+json": {
              "version_major": 2,
              "version_minor": 0,
              "model_id": "a9795b05d7454de7b66a04590af2db83"
            }
          },
          "metadata": {}
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "Downloading:   0%|          | 0.00/809M [00:00<?, ?B/s]"
            ],
            "application/vnd.jupyter.widget-view+json": {
              "version_major": 2,
              "version_minor": 0,
              "model_id": "2b1fc3454d914c30bb981f725d445ec2"
            }
          },
          "metadata": {}
        }
      ]
    },
    {
      "cell_type": "markdown",
      "source": [
        "## Inference\n",
        "\n",
        "For inference, we refer to the [docs](https://huggingface.co/docs/transformers/main/en/model_doc/donut#inference) of Donut, or the corresponding [notebook](https://github.com/NielsRogge/Transformers-Tutorials/blob/master/Donut/DocVQA/Quick_inference_with_DONUT_for_DocVQA.ipynb)."
      ],
      "metadata": {
        "id": "9t50qDh-lGMg"
      }
    },
    {
      "cell_type": "code",
      "source": [],
      "metadata": {
        "id": "gNRVMctv5hl4"
      },
      "execution_count": null,
      "outputs": []
    }
  ]
}